Ecoer Logo

@susdabble

25

Dabbling on stuffs that matter. Art, technology, science and nature.

steemit.com/@susdabble
VOTING POWER100.00%
DOWNVOTE POWER100.00%
RESOURCE CREDITS100.00%
REPUTATION PROGRESS0.00%
Net Worth
0.034USD
STEEM
0.000STEEM
SBD
0.000SBD
Effective Power
5.001SP
├── Own SP
0.634SP
└── Incoming Deleg
+4.368SP

Detailed Balance

STEEM
balance
0.000STEEM
market_balance
0.000STEEM
savings_balance
0.000STEEM
reward_steem_balance
0.000STEEM
STEEM POWER
Own SP
0.634SP
Delegated Out
0.000SP
Delegation In
4.368SP
Effective Power
5.001SP
Reward SP (pending)
0.000SP
SBD
sbd_balance
0.000SBD
sbd_conversions
0.000SBD
sbd_market_balance
0.000SBD
savings_sbd_balance
0.000SBD
reward_sbd_balance
0.000SBD
{
  "balance": "0.000 STEEM",
  "savings_balance": "0.000 STEEM",
  "reward_steem_balance": "0.000 STEEM",
  "vesting_shares": "1031.592016 VESTS",
  "delegated_vesting_shares": "0.000000 VESTS",
  "received_vesting_shares": "7112.067790 VESTS",
  "sbd_balance": "0.000 SBD",
  "savings_sbd_balance": "0.000 SBD",
  "reward_sbd_balance": "0.000 SBD",
  "conversions": []
}

Account Info

namesusdabble
id323831
rank1,427,517
reputation138181302
created2017-08-21T14:37:57
recovery_accountsteem
proxyNone
post_count3
comment_count0
lifetime_vote_count0
witnesses_voted_for0
last_post2017-11-12T05:04:15
last_root_post2017-11-05T09:48:00
last_vote_time2017-11-05T14:43:09
proxied_vsf_votes0, 0, 0, 0
can_vote1
voting_power0
delayed_votes0
balance0.000 STEEM
savings_balance0.000 STEEM
sbd_balance0.000 SBD
savings_sbd_balance0.000 SBD
vesting_shares1031.592016 VESTS
delegated_vesting_shares0.000000 VESTS
received_vesting_shares7112.067790 VESTS
reward_vesting_balance0.000000 VESTS
vesting_balance0.000 STEEM
vesting_withdraw_rate0.000000 VESTS
next_vesting_withdrawal1969-12-31T23:59:59
withdrawn0
to_withdraw0
withdraw_routes0
savings_withdraw_requests0
last_account_recovery1970-01-01T00:00:00
reset_accountnull
last_owner_update1970-01-01T00:00:00
last_account_update2017-11-04T05:36:57
minedNo
sbd_seconds0
sbd_last_interest_payment1970-01-01T00:00:00
savings_sbd_last_interest_payment1970-01-01T00:00:00
{
  "id": 323831,
  "name": "susdabble",
  "owner": {
    "weight_threshold": 1,
    "account_auths": [],
    "key_auths": [
      [
        "STM5dhB6xzHfftXCn8A47WrNhJPDQLsT4wY1U847mAQAzE15KvneT",
        1
      ]
    ]
  },
  "active": {
    "weight_threshold": 1,
    "account_auths": [],
    "key_auths": [
      [
        "STM6UBb6dJzCg21rd59rmj87gjRSqHSBEkMYDHULPBYaiHE7jwED3",
        1
      ]
    ]
  },
  "posting": {
    "weight_threshold": 1,
    "account_auths": [],
    "key_auths": [
      [
        "STM7yeupirf6mDzVRAcFyv9NqpnwaGyrsouURYAo6YTCqR4aq6rUz",
        1
      ]
    ]
  },
  "memo_key": "STM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig",
  "json_metadata": "{\"profile\":{\"name\":\"Sus\",\"website\":\"https://susdabble.com/\",\"profile_image\":\"https://lh3.googleusercontent.com/ASZgPbpWzEnZt6VZhm4R5iLUAoIW5guKR1HEdIf454aChEoLo665i8fUa5ngmzBsbNHcuYFj_hqukPtCdBkoaymJH1hYKYn8cKjKypMwygvgM-PFB5R-naQy4ZxpXD57jVSp23nLJpGcKAUc3xX2tqcSu2TVolGt8JfD_g2HQF4hrn0HepOIoAxEaZoxa-LRTQTTfMnSuLTCUQKQPLcFP-COb3MlFV_S2VWdgZjtX9YEsQAsbRggllxxutJk14304Yz1vUPS_dQ-Vf6u7tv4utW03cyBffCkOe9JAm5QEfJl1Afrz3NmoojhwEEg1Uy5UA5OwjuLgMWsKtbCM_771Y6mIwg4oyahsDNtHVmSb7zIMNx5Rc032fj20nC5r8WEldH1OIRoeC-8anREzyGZkgB_A2G3XivvGntLTK794_C0lK9E0hE2MYuHLIoIQxLcX6ND-nzr_3g9oq2Yi5FfK9Jrn2RN-_oOoIOA7RQPIOjaKwwsO6IO67BoLPkWHDur_KAsmXQ7h-A_U1qaPm6vWYsIMnhATilhiSlH3d8AWo-e0Td4uOnaNZKCGgoxIzE-2Ia0g8XM8zUYCfHwJ-LSSCLBz9obLq6rWSUL8aCwZg=w994-h859-no\",\"cover_image\":\"https://lh3.googleusercontent.com/PFG2VmU9USij64dg_pQRhg-ffM8NzGdDPhPlO7FCvMVRLcirPvzYOhFlGz0NEt1YK4QmXRgeCQxiv0ye64RuuN3QQTkfHRbw1Dt9_tZgq_eJKcQMUqnQnQMOK7WeAQcxm99r4El7aBZXHf3EYXRyc2SX4swatnTeitMlCT0-DFAEDP82g8nw4iVoQVefDXjXJXVbgcPpXSiAHiHLJGtxcidl8oVGSNopJoo5mmHd52Hgc_5OEqvwZnQ4qbp-A__usPJ5u5-FoECKQ5qUQN3qI6SFaPOERtWRUE5gSeOSaJl1szaT1MHAqy-d9XOiR2B9gwVEOyvSzKMIBu_crr1WsbhrO0PuLoxAxf_c_T_XkzJ5KTR45uSaNmtZC11SxhRu6zb9yqHNuYg3zKpOtMspdIe4iBIKZBSk2VhoUGOQtLtmDAjB37Re0ryC6DEapxAHFV5jqeqM92xC33AznssuhGVzF7K3C5YcWKqIiFCghvq0zv7JdIGsB9JbdokBa-bpnQ2OU7CGAFW8Q84Qwx2Ut02-jTa8qYrjV1TEdbBRiDwBUlCNkDH_xqZOSyx_gW45C0r4MBipFDfvvi4VMCu_O5-Wnn0rzMRcT9U3S4FxlQ=w2060-h402-no\",\"about\":\"Dabbling on stuffs that matter. Art, technology, science and nature.\"}}",
  "posting_json_metadata": "{\"profile\":{\"name\":\"Sus\",\"website\":\"https://susdabble.com/\",\"profile_image\":\"https://lh3.googleusercontent.com/ASZgPbpWzEnZt6VZhm4R5iLUAoIW5guKR1HEdIf454aChEoLo665i8fUa5ngmzBsbNHcuYFj_hqukPtCdBkoaymJH1hYKYn8cKjKypMwygvgM-PFB5R-naQy4ZxpXD57jVSp23nLJpGcKAUc3xX2tqcSu2TVolGt8JfD_g2HQF4hrn0HepOIoAxEaZoxa-LRTQTTfMnSuLTCUQKQPLcFP-COb3MlFV_S2VWdgZjtX9YEsQAsbRggllxxutJk14304Yz1vUPS_dQ-Vf6u7tv4utW03cyBffCkOe9JAm5QEfJl1Afrz3NmoojhwEEg1Uy5UA5OwjuLgMWsKtbCM_771Y6mIwg4oyahsDNtHVmSb7zIMNx5Rc032fj20nC5r8WEldH1OIRoeC-8anREzyGZkgB_A2G3XivvGntLTK794_C0lK9E0hE2MYuHLIoIQxLcX6ND-nzr_3g9oq2Yi5FfK9Jrn2RN-_oOoIOA7RQPIOjaKwwsO6IO67BoLPkWHDur_KAsmXQ7h-A_U1qaPm6vWYsIMnhATilhiSlH3d8AWo-e0Td4uOnaNZKCGgoxIzE-2Ia0g8XM8zUYCfHwJ-LSSCLBz9obLq6rWSUL8aCwZg=w994-h859-no\",\"cover_image\":\"https://lh3.googleusercontent.com/PFG2VmU9USij64dg_pQRhg-ffM8NzGdDPhPlO7FCvMVRLcirPvzYOhFlGz0NEt1YK4QmXRgeCQxiv0ye64RuuN3QQTkfHRbw1Dt9_tZgq_eJKcQMUqnQnQMOK7WeAQcxm99r4El7aBZXHf3EYXRyc2SX4swatnTeitMlCT0-DFAEDP82g8nw4iVoQVefDXjXJXVbgcPpXSiAHiHLJGtxcidl8oVGSNopJoo5mmHd52Hgc_5OEqvwZnQ4qbp-A__usPJ5u5-FoECKQ5qUQN3qI6SFaPOERtWRUE5gSeOSaJl1szaT1MHAqy-d9XOiR2B9gwVEOyvSzKMIBu_crr1WsbhrO0PuLoxAxf_c_T_XkzJ5KTR45uSaNmtZC11SxhRu6zb9yqHNuYg3zKpOtMspdIe4iBIKZBSk2VhoUGOQtLtmDAjB37Re0ryC6DEapxAHFV5jqeqM92xC33AznssuhGVzF7K3C5YcWKqIiFCghvq0zv7JdIGsB9JbdokBa-bpnQ2OU7CGAFW8Q84Qwx2Ut02-jTa8qYrjV1TEdbBRiDwBUlCNkDH_xqZOSyx_gW45C0r4MBipFDfvvi4VMCu_O5-Wnn0rzMRcT9U3S4FxlQ=w2060-h402-no\",\"about\":\"Dabbling on stuffs that matter. Art, technology, science and nature.\"}}",
  "proxy": "",
  "last_owner_update": "1970-01-01T00:00:00",
  "last_account_update": "2017-11-04T05:36:57",
  "created": "2017-08-21T14:37:57",
  "mined": false,
  "recovery_account": "steem",
  "last_account_recovery": "1970-01-01T00:00:00",
  "reset_account": "null",
  "comment_count": 0,
  "lifetime_vote_count": 0,
  "post_count": 3,
  "can_vote": true,
  "voting_manabar": {
    "current_mana": "8143659806",
    "last_update_time": 1779087882
  },
  "downvote_manabar": {
    "current_mana": 2035914951,
    "last_update_time": 1779087882
  },
  "voting_power": 0,
  "balance": "0.000 STEEM",
  "savings_balance": "0.000 STEEM",
  "sbd_balance": "0.000 SBD",
  "sbd_seconds": "0",
  "sbd_seconds_last_update": "1970-01-01T00:00:00",
  "sbd_last_interest_payment": "1970-01-01T00:00:00",
  "savings_sbd_balance": "0.000 SBD",
  "savings_sbd_seconds": "0",
  "savings_sbd_seconds_last_update": "1970-01-01T00:00:00",
  "savings_sbd_last_interest_payment": "1970-01-01T00:00:00",
  "savings_withdraw_requests": 0,
  "reward_sbd_balance": "0.000 SBD",
  "reward_steem_balance": "0.000 STEEM",
  "reward_vesting_balance": "0.000000 VESTS",
  "reward_vesting_steem": "0.000 STEEM",
  "vesting_shares": "1031.592016 VESTS",
  "delegated_vesting_shares": "0.000000 VESTS",
  "received_vesting_shares": "7112.067790 VESTS",
  "vesting_withdraw_rate": "0.000000 VESTS",
  "next_vesting_withdrawal": "1969-12-31T23:59:59",
  "withdrawn": 0,
  "to_withdraw": 0,
  "withdraw_routes": 0,
  "curation_rewards": 0,
  "posting_rewards": 0,
  "proxied_vsf_votes": [
    0,
    0,
    0,
    0
  ],
  "witnesses_voted_for": 0,
  "last_post": "2017-11-12T05:04:15",
  "last_root_post": "2017-11-05T09:48:00",
  "last_vote_time": "2017-11-05T14:43:09",
  "post_bandwidth": 0,
  "pending_claimed_accounts": 0,
  "vesting_balance": "0.000 STEEM",
  "reputation": 138181302,
  "transfer_history": [],
  "market_history": [],
  "post_history": [],
  "vote_history": [],
  "other_history": [],
  "witness_votes": [],
  "tags_usage": [],
  "guest_bloggers": [],
  "rank": 1427517
}

Withdraw Routes

IncomingOutgoing
Empty
Empty
{
  "incoming": [],
  "outgoing": []
}
From Date
To Date
steemdelegated 4.368 SP to @susdabble
2026/05/18 07:04:42
delegatorsteem
delegateesusdabble
vesting shares7112.067790 VESTS
Transaction InfoBlock #106151604/Trx 8194ee5ddab147637d883b8712acceb8cf7ba92a
View Raw JSON Data
{
  "trx_id": "8194ee5ddab147637d883b8712acceb8cf7ba92a",
  "block": 106151604,
  "trx_in_block": 0,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2026-05-18T07:04:42",
  "op": [
    "delegate_vesting_shares",
    {
      "delegator": "steem",
      "delegatee": "susdabble",
      "vesting_shares": "7112.067790 VESTS"
    }
  ]
}
steemdelegated 2.702 SP to @susdabble
2026/05/13 07:35:18
delegatorsteem
delegateesusdabble
vesting shares4399.857385 VESTS
Transaction InfoBlock #106008931/Trx 7b1a45645a8e52bd52290abc227aa00689ed8bf8
View Raw JSON Data
{
  "trx_id": "7b1a45645a8e52bd52290abc227aa00689ed8bf8",
  "block": 106008931,
  "trx_in_block": 1,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2026-05-13T07:35:18",
  "op": [
    "delegate_vesting_shares",
    {
      "delegator": "steem",
      "delegatee": "susdabble",
      "vesting_shares": "4399.857385 VESTS"
    }
  ]
}
steemdelegated 4.375 SP to @susdabble
2026/04/26 06:15:21
delegatorsteem
delegateesusdabble
vesting shares7124.583546 VESTS
Transaction InfoBlock #105519067/Trx dae8537e4e79e9dd3bf8fb42060b6910f214ff48
View Raw JSON Data
{
  "trx_id": "dae8537e4e79e9dd3bf8fb42060b6910f214ff48",
  "block": 105519067,
  "trx_in_block": 5,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2026-04-26T06:15:21",
  "op": [
    "delegate_vesting_shares",
    {
      "delegator": "steem",
      "delegatee": "susdabble",
      "vesting_shares": "7124.583546 VESTS"
    }
  ]
}
steemdelegated 2.727 SP to @susdabble
2026/01/24 02:10:27
delegatorsteem
delegateesusdabble
vesting shares4441.404204 VESTS
Transaction InfoBlock #102873820/Trx a98bac5c2cc950338f150c41127aca01daff28be
View Raw JSON Data
{
  "trx_id": "a98bac5c2cc950338f150c41127aca01daff28be",
  "block": 102873820,
  "trx_in_block": 4,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2026-01-24T02:10:27",
  "op": [
    "delegate_vesting_shares",
    {
      "delegator": "steem",
      "delegatee": "susdabble",
      "vesting_shares": "4441.404204 VESTS"
    }
  ]
}
steemdelegated 2.828 SP to @susdabble
2024/12/17 21:19:48
delegatorsteem
delegateesusdabble
vesting shares4605.623401 VESTS
Transaction InfoBlock #91320022/Trx 4c55bd168cf41c9156ac19070b06c8ab470720f8
View Raw JSON Data
{
  "trx_id": "4c55bd168cf41c9156ac19070b06c8ab470720f8",
  "block": 91320022,
  "trx_in_block": 1,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2024-12-17T21:19:48",
  "op": [
    "delegate_vesting_shares",
    {
      "delegator": "steem",
      "delegatee": "susdabble",
      "vesting_shares": "4605.623401 VESTS"
    }
  ]
}
steemdelegated 2.932 SP to @susdabble
2023/11/14 12:59:24
delegatorsteem
delegateesusdabble
vesting shares4774.756933 VESTS
Transaction InfoBlock #79874131/Trx 2a15774a8984bc69839112496f5fc0b2ea324474
View Raw JSON Data
{
  "trx_id": "2a15774a8984bc69839112496f5fc0b2ea324474",
  "block": 79874131,
  "trx_in_block": 3,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2023-11-14T12:59:24",
  "op": [
    "delegate_vesting_shares",
    {
      "delegator": "steem",
      "delegatee": "susdabble",
      "vesting_shares": "4774.756933 VESTS"
    }
  ]
}
steemdelegated 4.736 SP to @susdabble
2023/09/22 11:19:51
delegatorsteem
delegateesusdabble
vesting shares7711.665719 VESTS
Transaction InfoBlock #78363988/Trx f5a262d098f0b5bb5ddb353d0ef354433b90a2a9
View Raw JSON Data
{
  "trx_id": "f5a262d098f0b5bb5ddb353d0ef354433b90a2a9",
  "block": 78363988,
  "trx_in_block": 4,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2023-09-22T11:19:51",
  "op": [
    "delegate_vesting_shares",
    {
      "delegator": "steem",
      "delegatee": "susdabble",
      "vesting_shares": "7711.665719 VESTS"
    }
  ]
}
steemdelegated 4.872 SP to @susdabble
2022/11/03 18:40:42
delegatorsteem
delegateesusdabble
vesting shares7933.717157 VESTS
Transaction InfoBlock #69121591/Trx 33ab6751ef8df2b9b3eff6d2da4997d688bd1023
View Raw JSON Data
{
  "trx_id": "33ab6751ef8df2b9b3eff6d2da4997d688bd1023",
  "block": 69121591,
  "trx_in_block": 4,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2022-11-03T18:40:42",
  "op": [
    "delegate_vesting_shares",
    {
      "delegator": "steem",
      "delegatee": "susdabble",
      "vesting_shares": "7933.717157 VESTS"
    }
  ]
}
steemdelegated 5.007 SP to @susdabble
2022/01/17 23:47:45
delegatorsteem
delegateesusdabble
vesting shares8153.824758 VESTS
Transaction InfoBlock #60824746/Trx 7656e88e1fc8e5ab9c2ef8b4c6e3a0f15ee8acd8
View Raw JSON Data
{
  "trx_id": "7656e88e1fc8e5ab9c2ef8b4c6e3a0f15ee8acd8",
  "block": 60824746,
  "trx_in_block": 8,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2022-01-17T23:47:45",
  "op": [
    "delegate_vesting_shares",
    {
      "delegator": "steem",
      "delegatee": "susdabble",
      "vesting_shares": "8153.824758 VESTS"
    }
  ]
}
steemdelegated 5.120 SP to @susdabble
2021/06/14 06:56:39
delegatorsteem
delegateesusdabble
vesting shares8338.019046 VESTS
Transaction InfoBlock #54615026/Trx 18d68445e0af660c6cfbc0fe0f33a4b2f7658dff
View Raw JSON Data
{
  "trx_id": "18d68445e0af660c6cfbc0fe0f33a4b2f7658dff",
  "block": 54615026,
  "trx_in_block": 1,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2021-06-14T06:56:39",
  "op": [
    "delegate_vesting_shares",
    {
      "delegator": "steem",
      "delegatee": "susdabble",
      "vesting_shares": "8338.019046 VESTS"
    }
  ]
}
steemdelegated 5.236 SP to @susdabble
2020/12/11 17:08:18
delegatorsteem
delegateesusdabble
vesting shares8525.441020 VESTS
Transaction InfoBlock #49362268/Trx a685cb2e9034fe60f49c6271661f410d11aee1ef
View Raw JSON Data
{
  "trx_id": "a685cb2e9034fe60f49c6271661f410d11aee1ef",
  "block": 49362268,
  "trx_in_block": 3,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2020-12-11T17:08:18",
  "op": [
    "delegate_vesting_shares",
    {
      "delegator": "steem",
      "delegatee": "susdabble",
      "vesting_shares": "8525.441020 VESTS"
    }
  ]
}
steemdelegated 1.175 SP to @susdabble
2020/12/06 10:43:33
delegatorsteem
delegateesusdabble
vesting shares1912.543513 VESTS
Transaction InfoBlock #49213776/Trx 3c954a62bae3154c6b6f0c7420b84929791b6c88
View Raw JSON Data
{
  "trx_id": "3c954a62bae3154c6b6f0c7420b84929791b6c88",
  "block": 49213776,
  "trx_in_block": 4,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2020-12-06T10:43:33",
  "op": [
    "delegate_vesting_shares",
    {
      "delegator": "steem",
      "delegatee": "susdabble",
      "vesting_shares": "1912.543513 VESTS"
    }
  ]
}
steemdelegated 5.239 SP to @susdabble
2020/12/05 20:46:09
delegatorsteem
delegateesusdabble
vesting shares8531.648874 VESTS
Transaction InfoBlock #49197354/Trx 8f88249373c33270dd050427f846d21d2ca1e33f
View Raw JSON Data
{
  "trx_id": "8f88249373c33270dd050427f846d21d2ca1e33f",
  "block": 49197354,
  "trx_in_block": 3,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2020-12-05T20:46:09",
  "op": [
    "delegate_vesting_shares",
    {
      "delegator": "steem",
      "delegatee": "susdabble",
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2020/11/03 04:09:36
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steemdelegated 5.364 SP to @susdabble
2020/05/09 11:47:30
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steemdelegated 1.200 SP to @susdabble
2020/05/08 16:17:51
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steemdelegated 5.372 SP to @susdabble
2020/04/16 03:43:21
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2019/08/21 15:34:54
parent authorsusdabble
parent permlinkju4sg-machine-learning-artistic
authorsteemitboard
permlinksteemitboard-notify-susdabble-20190821t153454000z
title
bodyCongratulations @susdabble! You received a personal award! <table><tr><td>https://steemitimages.com/70x70/http://steemitboard.com/@susdabble/birthday2.png</td><td>Happy Birthday! - You are on the Steem blockchain for 2 years!</td></tr></table> <sub>_You can view [your badges on your Steem Board](https://steemitboard.com/@susdabble) and compare to others on the [Steem Ranking](https://steemitboard.com/ranking/index.php?name=susdabble)_</sub> ###### [Vote for @Steemitboard as a witness](https://v2.steemconnect.com/sign/account-witness-vote?witness=steemitboard&approve=1) to get one more award and increased upvotes!
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steemdelegated 5.492 SP to @susdabble
2019/05/12 20:50:45
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2019/05/07 13:22:51
votersusdabble
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2018/08/21 16:04:42
parent authorsusdabble
parent permlinkju4sg-machine-learning-artistic
authorsteemitboard
permlinksteemitboard-notify-susdabble-20180821t160444000z
title
bodyCongratulations @susdabble! You have received a personal award! [![](https://steemitimages.com/70x70/http://steemitboard.com/@susdabble/birthday1.png)](http://steemitboard.com/@susdabble) 1 Year on Steemit <sub>_Click on the badge to view your Board of Honor._</sub> **Do not miss the last post from @steemitboard:** [SteemitBoard and the Veterans on Steemit - The First Community Badge.](https://steemit.com/veterans/@steemitboard/steemitboard-and-the-veterans-on-steemit-the-first-community-badge) > Do you like [SteemitBoard's project](https://steemit.com/@steemitboard)? Then **[Vote for its witness](https://v2.steemconnect.com/sign/account-witness-vote?witness=steemitboard&approve=1)** and **get one more award**!
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2018/06/07 19:17:03
parent authorsusdabble
parent permlinkju4sg-machine-learning-artistic
authorajnicola
permlinkre-susdabble-ju4sg-machine-learning-artistic-20180607t191701268z
title
bodyWow, very insightful! Wonderful to come across a conglomerated post explaining the utilization of machine learning in art. Thank you for the newfound tools and step by step processes!
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2018/06/07 19:11:33
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steemdelegated 5.614 SP to @susdabble
2018/05/17 03:07:51
delegatorsteem
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steemdelegated 18.135 SP to @susdabble
2018/04/21 20:53:33
delegatorsteem
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steemdelegated 18.260 SP to @susdabble
2017/12/12 22:25:12
delegatorsteem
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2017/11/20 17:59:24
parent authorsusdabble
parent permlinkre-terenceplizga-re-susdabble-machine-learning-artistic-20171112t050413665z
authorsamurax
permlinkre-susdabble-re-terenceplizga-re-susdabble-machine-learning-artistic-20171120t175923639z
title
bodyVery nice article . I think that AI will outperform humans in this fields too . Sadly.
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      "body": "Very nice article .  I think that AI will outperform humans in this fields too .  Sadly.",
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2017/11/12 08:22:06
voterterenceplizga
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2017/11/12 05:04:45
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2017/11/12 05:04:15
parent authorterenceplizga
parent permlinkre-susdabble-machine-learning-artistic-20171110t002323074z
authorsusdabble
permlinkre-terenceplizga-re-susdabble-machine-learning-artistic-20171112t050413665z
title
bodyThanks and glad it sets you thinking too. On sentience, I do agree machines will not be able to admire a painting like a human, except to rate and score its admiration achievements and effects and move on to next task. Criticising it for using other art styles is an interesting idea to learning own style, nice thought towards machine art evolution.
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      "body": "Thanks and glad it sets you thinking too. On sentience, I do agree machines will not be able to admire a painting like a human, except to rate and score its admiration achievements and effects and move on to next task. Criticising it for using other art styles is an interesting idea to learning own style, nice thought towards machine art evolution.",
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2017/11/10 19:07:42
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2017/11/10 16:29:45
parent author
parent permlinkart
authorsusdabble
permlinkmachine-learning-artistic
titleMachine Learning Artistic
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2017/11/10 16:26:09
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2017/11/10 16:25:15
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2017/11/10 06:05:48
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body@@ -584,16 +584,13 @@ ain -two +a GAN -s (in @@ -614,24 +614,32 @@ Zero), one +network that creates
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2017/11/10 00:25:42
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bodyNice article. At first I firmly disagreed that a machine learning algorithm could truly produce art, but your article makes me think that we are closing in on that target. We all know that even the most advanced neural networks lack sentience. They really are somewhat mindless, ever toiling away at the optimization of a least squares or cross entropy cost function. Our machines cannot stand back with admiration of a painting they create and say, "ah, yes, I did that and it is pleasing to me." However, I had a thought about GANs. An interesting experiment would be to train two GANs (inspired by AlphaGo Zero), one that creates art, and one that criticizes it (perhaps because it is "too close" to an existing human art style, like impressionism for example), and have those two networks battle each other for a while. I suspect that the final artwork that would emerge would be something truly new. One could no longer say that the neural network was copying existing styles and applying them to images. Once again, nice article. Thanks for taking the time to write it.
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      "body": "Nice article.  At first I firmly disagreed that a machine learning algorithm could truly produce art, but your article makes me think that we are closing in on that target.  We all know that even the most advanced neural networks lack sentience.  They really are somewhat mindless, ever toiling away at the optimization of a least squares or cross entropy cost function.  Our machines cannot stand back with admiration of a painting they create and say, \"ah, yes, I did that and it is pleasing to me.\"  \n\nHowever, I had a thought about GANs.  An interesting experiment would be to train two GANs (inspired by AlphaGo Zero), one that creates art, and one that criticizes it (perhaps because it is \"too close\" to an existing human art style, like impressionism for example), and have those two networks battle each other for a while.  I suspect that the final artwork that would emerge would be something truly new.  One could no longer say that the neural network was copying existing styles and applying them to images.  \n\nOnce again, nice article.  Thanks for taking the time to write it.",
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2017/11/10 00:13:48
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2017/11/05 15:37:45
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2017/11/05 14:43:09
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2017/11/05 14:39:54
parent author
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authorsusdabble
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titleMachine Learning Artistic
body<html> <p><br>https://steemitimages.com/DQmbmDnaE6grxVaop1JNMKdCRhNHycjS4vRF4r1V2uzci5E/Screen%20Shot%202017-10-30%20at%2011.00.35%20PM.png</p> <p>Machines learning to create artistic artworks. Humans learning to appreciate and enjoy their creations.</p> <p>There are&nbsp;<a href="https://magenta.tensorflow.org/welcome-to-magenta">Google Magenta</a>, <a href="https://experiments.withgoogle.com/arts-culture">Google Art Experiment</a>, <a href="https://ami.withgoogle.com/">Artist and Machine Intelligence</a>, <a href="https://research.googleblog.com/2015/06/inceptionism-going-deeper-into-neural.html">Deep Dream</a>, <a href="https://www.cambridgeconsultants.com/vincent">Vincent</a>&nbsp;around among others. All are important steps using machine learning to push arts frontier.&nbsp;</p> <p><br></p> <p><strong>Hold on, what do we understand about the word art?</strong></p> <p>After reading from <a href="https://en.oxforddictionaries.com/definition/art">oxford dictionary</a>, <a href="https://philosophynow.org/issues/108/What_is_Art_and_or_What_is_Beauty">philosophy</a>, <a href="https://plato.stanford.edu/entries/art-definition/">academic</a> and finally landing on a&nbsp;<a href="https://www.theatlantic.com/entertainment/archive/2012/06/what-is-art-a-few-famous-definitions-from-antiquity-to-today/258871/">site</a>&nbsp;showing famous people definitions of art.&nbsp;I will conclude there is no one definition for art and shall relate to how <a href="https://www.thoughtco.com/what-is-the-definition-of-art-182707">Lisa Marder</a>&nbsp;explains:</p> <blockquote>"... there is general consensus that&nbsp;art is the conscious creation of something beautiful or meaningful using skill and imagination". <em>- Ways of Defining Arts, Lisa Marder</em></blockquote> <p><br></p> <p><strong>In the first place, why do we even&nbsp;love and appreciate art?</strong></p> <p>Now feel ourselves in the artists' world! Every art is incomplete, leaving a magical missing piece for us to relate. Completed only when we look, listen, feel or interact with it. Stirring the emotional power in us. Eliciting feelings of lightness,&nbsp;heaviness, numbness, spaciousness, sadness, dense, fear, shock, anger, hope, awe, to having profound realisation, inspirations and uncontrollable reactions.</p> <p>As for me, I am someone who can only appreciate and relate to arts where I can connect with. Drawing upon my intrinsic interpretation of skills and beauty.</p> <p>Now, my logic hat is put on.</p> <p>From a science point, we are social beings and naturally draw connections from things around us. Do you know the&nbsp;<a href="https://www.scientificamerican.com/article/the-mirror-neuron-revolut/">mirror neurons in our brain help us understand actions, intentions and emotions of other people by imitating them</a>? When we receive an external stimulus like a painting, an inner simulation is created by the mirror neurons. Without having to physically experience it, we can relate to what emotions the painting is trying to invoke and even what the artist was experiencing.</p> <p>Art philosopher Denis Dutton spoke of artistic beauty not being entirely cultural in his&nbsp;<a href="https://www.ted.com/talks/denis_dutton_a_darwinian_theory_of_beauty/discussion#t-907396">TED talk</a>:</p> <blockquote><em><strong>One fundamental traits of the ancestor personalities persists in our aesthetic cravings: the beauty we find in skilled performances... We find beauty in something done well.- Ted Talk: A Dwarwinian Theory of Beauty, Dennis Dutton</strong></em></blockquote> <p>It is in our genes, we are drawn to things skillfully done!</p> <p><br></p> <p><strong>Technology art is a new era.</strong></p> <p>For many decades, technology played a big role in facilitating creative arts. Interestingly, we are now beginning to see machines attempting to replace creative work which was long thought to be unique human talent.</p> <p>A short detour to quickly understand art from <a href="https://www.youtube.com/watch?v=bkWHrWw5yTg&amp;t=1s">known history</a>&nbsp;and&nbsp;<a href="http://www.bu.edu/thenerve/archives/fall-2009/art-and-evolution/">science</a>.</p> <p>Sprinting through the long history. Since the Bronze Age (~3,200BC), arts&nbsp;were used for honouring ancestors or beliefs in something greater than themselves. Age of Idealism (~900BC) was when arts begin to show individualism. From Middle Ages (~500AD) onwards, some common trends in the world were to use art for promoting religions, statuses and influencing masses to an ideology.</p> <p>A large part of how art progress seems to closely follow the spirit of the era. Finally, art since the 18th century had slowly evolved to discovering and expressing our own style and experiences today<strong>.</strong></p> <p>Outright lazy with a paraphrase from a good (long)&nbsp;<a href="http://www.bu.edu/thenerve/archives/fall-2009/art-and-evolution/">neuroscience article</a>&nbsp;explaining art and evolution:&nbsp;<em>Most activities that are important for the survival of a species, such as eating and sex are pleasurable; human brains evolved mechanisms to reward and encourage these behaviours,&nbsp;promoting the passing on of genes. But humans can learn to tap directly into these neural reward systems.&nbsp;Humans can eat foods that have no nutritive value and have sex without reproducing. As cognitive psychologist Steven Pinker puts it, the arts respond to “a biologically pointless challenge: figuring out how to get at the pleasure buttons of the brain and deliver little jolts of enjoyment without the inconvenience of wringing real fitness increments from the harsh world”.</em>&nbsp;</p> <p><br></p> <p><strong>Art on its own means skill and craft.</strong></p> <p>Creative art includes mind and intuition; bringing disparate things together and finding meaning in them with skill and craft.These people are all using creative skills and crafts. Sculptors who crave, musicians who compose, artists who paint, scientists who discover through experimentations, businessmen who create whole new business landscapes, digital artists who produce creative work like film, music, paintings, web design.&nbsp;</p> <p><br></p> <p><strong>So can machine truly be an artistic creator?</strong></p> <p>After all these information. I would say yes! But in the case where humans are only involved in setting up and training the machine to create art. Finally, once a good algorithm has been learnt, the machine can create new artistic&nbsp;artworks without human inputs. In my opinion, this can mean creative art done by a machine.</p> <p>The rest of this post will be on using machine&nbsp;learning methods to create art. Specifically drawing and painting possibilities since I enjoy <a href="https://suslove.com/">drawing</a>&nbsp;too!</p> <p><br></p> <p>A progressive flow on how human-assisted machine become an independent creator:</p> <ol> <li><strong>Categorising style</strong> <em>- just sorting them out</em></li> <li><strong>Transferring style </strong><em>- machine change images into a different style</em></li> <li><strong>Suggesting/Designing style</strong> <em>- human and machine collaboration</em></li> <li><strong>Creating new style</strong> <em>- machine own creation</em></li> </ol> <p><br></p> <p><br></p> <h3>1. Categorising style</h3> <p><br></p> <p>Categorising&nbsp;the style of an artwork using machine learning. Take an example of simply sorting art pieces into painting, drawing, graffiti, and sketching. Or even more complex sorting like what was used to create a painting; oil pastel, watercolour and colour pencils, and an artists' style, nuances and subtle characteristics.</p> <p>Classification method will be used for this form of sorting. Usually, deep learning (neural) network will be used for better accuracy.</p> <p>Categorising into various artists' style may get very debatable as most people will likely refer to well-known artists. When it comes to art, you never really know what a unique style is until the artist's arts are recognised. To complicate further, being recognised can refer to the whole world, within a country, within&nbsp;a community or even within an aspiring group.</p> <p>Another type of categorising artworks is to use unsupervised learning to cluster them into similar styles. An efficient way to find out different types of styles available when you have too many artworks data. Sometimes with <a href="https://artsexperiments.withgoogle.com/tags/">surprising results</a> how the art pieces are similar in ways you never thought of before.</p> <p>&nbsp;</p> <p><br></p> <h3><strong>2. Transferring Styles</strong></h3> <p><br></p> <p><strong>Starting with single style transfer.</strong></p> <p>Style transfer is one of the earliest methods using neural network models (or deep learning) to create artistic images. Even though a lot of progress has been made in the last couple of years, it is still a new area with lots of research opportunities.</p> <p>The output image will keep its content but it resembles being created in a different style. The results are really promising from an artistic sense and the potential to recreate pictures in any style. An example below from Google Research Blog:</p> <p>https://3.bp.blogspot.com/-4Uj3hPFupok/VYIT6s_c9OI/AAAAAAAAAlc/_yGdbbsmGiw/s1600/ibis.png</p> <p>Left: Original photo by&nbsp;<a href="https://www.flickr.com/photos/zachievenor/8258092492/in/set-72157630014410078"><em>Zachi Evenor</em></a><em>. Right: processed by Günther Noack, Software Engineer. </em>(Source: <a href="https://research.googleblog.com/2015/06/inceptionism-going-deeper-into-neural.html">Inceptionism: Going Deeper into Neural Networks</a>)</p> <p>And style transfer on a video:</p> <p>https://www.youtube.com/watch?v=Khuj4ASldmU</p> <p><br></p> <p>Now a simple explanation on how deep learning (neural network) creates it.A deep learning network usually has many layers in it. We will start off with what is happening in each layer. When a picture is first being processed by the network, the lower layers will learn patterns such as colours, edges, shapes. As the layers go higher (deeper), it gradually learns more abstract, complex and fine details. The lower layer, when used to enhance an image, creates the effect you see in the photo above or more <a href="https://www.theverge.com/2017/3/30/15124466/ai-photo-style-transfer-deep-neural-nets-adobe">here</a>.</p> <p>What details the layers are extracting are well illustrated here:</p> <p>https://adriancolyer.files.wordpress.com/2017/02/vis-cnns-fig-2.jpeg?w=566&amp;zoom=2 (Source: <a href="https://blog.acolyer.org/2017/02/27/understanding-generalisation-and-transfer-learning-in-deep-neural-networks/">Understanding, generalisation, and transfer learning in deep neural&nbsp;networks</a>)</p> <p>Want to give it a try? Use this <a href="https://deepart.io/">site</a>.</p> <p>As for those who know some basics on neural network. Instead of classifying the data, you are actually transforming the image you have input with the style you desire. By doing a gradient descent (minimisation) on the output image style loss with both the input image and chosen style. More information to <a href="https://medium.com/artists-and-machine-intelligence/neural-artistic-style-transfer-a-comprehensive-look-f54d8649c199">read</a> or&nbsp;<a href="https://www.youtube.com/watch?v=Oex0eWoU7AQ">watch</a>.&nbsp;</p> <p><br></p> <p><strong>To mixing different styles.</strong></p> <p>Most of us probably have a few favourite styles. Here is&nbsp;<a href="https://magenta.tensorflow.org/2016/11/01/multistyle-pastiche-generator">multi-style pastiche generator</a>&nbsp;from Magenta Tensorflow illustrating how a photo can be recreated with different styles:</p> <p>Orginal Photo: After mixing styles:And a real-time multi-style app:https://www.youtube.com/watch?v=Ut5WYGi5yRU</p> <p><br></p> <p>The drawback of this style transfer is its inability to accurately recreate fine details. Sometimes you will want to retain the high resolution on faces and landscapes.There are already different methods (<a href="https://blog.paperspace.com/style-transfer-part-2/">Markov Random Fields (MRFs), Champandard</a>&nbsp;and <a href="https://www.reddit.com/r/MachineLearning/comments/68y8bb/r_deep_image_analogy/">K-Nearest Neighbor</a>) being explored to improve the resemblances of the original image fine details.</p> <p><br></p> <p><br></p> <h3>3. Suggesting / Designing style</h3> <p><br></p> <p>A collaboration between human and machines to create art. With machine assisting human through suggesting and designing styles together.</p> <p>Closest of style suggestion will be a nascent but promising one using assisted drawing. It seems to have the potential for many future possibilities. As for designing style, "Vincent" will be the latest development in this space. With DeepDream by Google having some aspects of co-designing too.</p> <p><br></p> <p><strong>Suggesting Style.</strong></p> <p>Design your drawing on a white space assisted by an AI bot. <a href="https://www.autodraw.com/">AutoDraw</a>&nbsp;by Google does just that, in a form of clipart style doodling.</p> <p>A good thing about this is it allows you to design your drawing with a bot continuously suggesting pictures for your choosing. Sometimes with absurd suggestions which may expand your imaginations. Who knows?</p> <p>https://youtu.be/VwRbvVrUXTc&nbsp;</p> <p><br></p> <p><strong>Designing Style.</strong></p> <p>A few years ago, <a href="https://www.youtube.com/watch?v=Xy1Naexo3Bc">machines are already able to improvise on classical music</a>. Now, Cambridge Consultants had come up with "<a href="https://www.cambridgeconsultants.com/vincent">Vincent</a>" which builds on your sketch input. Creating art on&nbsp;white spaces with you.</p> <p>I would think Vincent is a mix of suggesting and co-designing art with humans. Using what it had learnt from thousands of Renaissance to current day paintings,&nbsp;Vincent will turn your sketch into a complete drawing. With the sketcher guiding and influencing Vincent on its output.</p> <p>Really like "<a href="https://www.cambridgeconsultants.com/vincent">Vincent</a>"! I am calling it a sketcher's transformer:</p> <p>https://vimeo.com/234655275</p> <p>Vincent uses a relatively new neural network architecture call Generative Adversarial Networks (GANs) to improve what the networks are learning. Known for its accurate regeneration of photorealistic pictures. More information <a href="https://www.kdnuggets.com/2017/01/generative-adversarial-networks-hot-topic-machine-learning.html">here</a> and <a href="https://www.analyticsvidhya.com/blog/2017/06/introductory-generative-adversarial-networks-gans/">here</a>.&nbsp;</p> <p><br></p> <p>Next, is creating arts with DeepDream by Google.</p> <p>This method sometimes generates unexpected images. That's where the all the black box magic happens.</p> <p>In the hands of creatives, there are always ways to create cool stuff with them. Give the neural network model a tweak!&nbsp;Go deeper and mess around with the higher network layers.</p> <p>DeepDream is an interesting way to recreate a style likened to memory reconstruct. The output effects it creates have some aspects of co-design between human and machine.</p> <p>We will give the machine an image to design into something only it can relate. A glimpse at what happens using deep learning higher network layers on images (outputs look totally different!):</p> <p>https://steemitimages.com/DQmTbpqyLJ6WVHxsDb8CX73aPQfZBKb47XwMgUMU6fy4fBz/Screen%20Shot%202017-10-18%20at%2011.57.07%20AM.png (Source: <a href="https://photos.google.com/share/AF1QipPX0SCl7OzWilt9LnuQliattX4OUCj_8EP65_cTVnBmS1jnYgsGQAieQUc1VQWdgQ?key=aVBxWjhwSzg2RjJWLWRuVFBBZEN1d205bUdEMnhB">Inceptionism: Going deeper into Neural Networks</a>)</p> <p>And videos using DeepDream (first with the lower layers, second with higher layers):</p> <p>https://www.youtube.com/watch?v=RTHPRrSEdNE</p> <p>https://www.youtube.com/watch?v=gIqKBBxmqho</p> <p>There is a website <a href="https://dreamdeeply.com/">DreamDeeply</a>&nbsp;where you can try out deep dream images!</p> <p>Like me, you may feel deep dream images using lower neural network layers (video - Deep dreaming of Alice) seems similar to results using style transfer method. In actual, DeepDream is using a very different method.</p> <p>Instead of trying to classify a picture like what neural network usually perform, we will have to maximise the similarities the trained network layer found in the input image. Remember the lower and higher layers learn different types of details?</p> <p>If you have some basic understanding on Neural Network backpropagation. This <a href="https://www.youtube.com/watch?v=BsSmBPmPeYQ">video</a> gives a good basic explanation on how it is done, also a <a href="https://youtu.be/MrBzgvUNr4w">video</a>&nbsp;explaining it using Google Tensorflow.</p> <p>DeepDream creations using the higher layers drift away from more predictable creations. How the higher layers interpret a picture can sometimes change the output image completely into something else. The psychedelic effect of the output is a style of its own. Even though it is still limited to what the trained layers have learned, you may get surprising results!&nbsp;</p> <p><br></p> <p>Progress is neverending! An <a href="https://www.newscientist.com/article/2143784-ai-artist-conjures-up-convincing-fake-worlds-from-memories/">interesting work</a> by <a href="http://cqf.io/">Qifeng Chen</a> at Stanford University using memory reconstruct method to create dreamlike fake street. Create a scene by labelling the objects to be found in it. Leave the algorithm to reconstruct how it might look like in photo&nbsp;style.</p> <p>https://youtu.be/t169yNXX4oU</p> <h5><br></h5> <p><br></p> <h3><strong>4. Creating new styles</strong></h3> <p><br></p> <p>Without human assistance, can a machine learn to create a drawing or painting style of its own?</p> <p>My favourite Shimon can not only improvise music now but also create its <a href="https://www.youtube.com/watch?time_continue=4&amp;v=9qrUI-oPQlw">own classical music</a>.</p> <p>Since I unable to find what creating a new drawing and painting styles mean to me. Let me explain my thoughts with a short story.</p> <p>For the last 12 months, Don has been sitting in the middle of a big bustling city park filled with beautiful perennial, seasonal flowers and sparse trees. Every day, Don takes in everything that happened in its 360 degrees line of vision. The colourful fun-filled park during the day and during the quiet late night, couples strolling to occasional mugging and vice activities.</p> <p>Don not only record what he sees but sort them all into information clusters through its algorithm. Its surrounding will be sorted every 30 seconds into weather, colours, people, animals, insects, sound, spatial, ongoing activities, up to 100 thousands different types of clusters. Creating new clusters when necessary. In each cluster, every piece of sorted information will have a very long list of features; covering different emotional states, level of significance in a situation, design principles, general elements of designs, colours and tones representation, and so on. Each feature has a weight given according to its correlations to what the information is about (eg: a kid laughing will have a higher weight on happiness feature).</p> <p>Each morning from 7am-8am, a crowd gathered around. Don's algorithm starts processing all the information it has sorted.Don then starts creating one art piece, reconstructing a random segment of the park. It decides on its own whether to use a computer-generated watercolour, oil pastel, sketch, photorealistic or a mixed style. The daily artwork generated is influenced by what was recorded during last one day, one week, one month and from the day Don was switched on in the park. Similar to our short, mid, long-term memories.</p> <p>With learning capabilities, Don can improve its skill through our feedback. After seeing Don's artwork, you decided to push the buttons to rate what feelings are invoked in you. After giving 10 emotions, you caught a sign below a camera reading,&nbsp; "Love your feedback! Please note your ratings might be normalised if our camera detects significant inconsistencies between what you have rated and your facial expressions. This is to minimise trolling and incorrect data inputs for Don to learn."</p> <p>Don's first few weeks of artworks are a messy blend of activities happening in the day and night. Gradually over time, some artworks are beautifully blended as an expression of life in the park. When mugging happened the night before, Don thinks it is significant and traumatic enough, using darker shades and violent figures in its artwork. Some days you see a detailed and fine artwork, some days with a queer twist which you felt might indicate a lot of unexpected activities have happened over a period.</p> <p>People start calling it fake, spooky, nonsense, scam, artistic, talented, sick, awesome, on and on. Don doesn't care a bit! Only when it has recorded your reactions and words, the next artwork might to some extent be inspired by you.</p> <p>How will you think of Don the artist?&nbsp;</p> <p><br></p> <h3><strong>Will we appreciate fully machine-generated art?</strong></h3> <p><br></p> <p>Let's first take a look at how we have adapted to modern art after over a century and now a multi-billion dollars market. If you do a search, there are definitely many mixed feelings (more negative) for modern art.</p> <p>I would say art is very personal. A great piece of art might be perfect for many but there will always be someone who feels nothing special about it. When a piece of art is meant for you, it becomes a bridge between your inner world and the senses it invoked.</p> <p>Machine art will probably go through the same or even more challenging passage to social acceptance. Maybe we should also wonder how the unknown generation after <a href="http://time.com/4904288/igen-jean-m-twenge-review/">iGen</a> will embrace arts.</p> <p>To end this, will be some questions to ponder on. If machine creates its own art without human inputs. Can we feel talent in machine artwork? Can we or acclaimed artists really appreciate an art piece or music created by a machine? Can we call even call it a "Masterpiece"?</p> </html>
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Transaction InfoBlock #16958322/Trx 1811e81c355a381310a0af0d5b31d7e3cf421b0e
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  "trx_id": "1811e81c355a381310a0af0d5b31d7e3cf421b0e",
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  "timestamp": "2017-11-05T14:39:54",
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    "comment",
    {
      "parent_author": "",
      "parent_permlink": "art",
      "author": "susdabble",
      "permlink": "machine-learning-artistic",
      "title": "Machine Learning Artistic",
      "body": "<html>\n<p><br>https://steemitimages.com/DQmbmDnaE6grxVaop1JNMKdCRhNHycjS4vRF4r1V2uzci5E/Screen%20Shot%202017-10-30%20at%2011.00.35%20PM.png</p>\n<p>Machines learning to create artistic artworks. Humans learning to appreciate and enjoy their creations.</p>\n<p>There are&nbsp;<a href=\"https://magenta.tensorflow.org/welcome-to-magenta\">Google Magenta</a>, <a href=\"https://experiments.withgoogle.com/arts-culture\">Google Art Experiment</a>, <a href=\"https://ami.withgoogle.com/\">Artist and Machine Intelligence</a>, <a href=\"https://research.googleblog.com/2015/06/inceptionism-going-deeper-into-neural.html\">Deep Dream</a>, <a href=\"https://www.cambridgeconsultants.com/vincent\">Vincent</a>&nbsp;around among others. All are important steps using machine learning to push arts frontier.&nbsp;</p>\n<p><br></p>\n<p><strong>Hold on, what do we understand about the word art?</strong></p>\n<p>After reading from <a href=\"https://en.oxforddictionaries.com/definition/art\">oxford dictionary</a>, <a href=\"https://philosophynow.org/issues/108/What_is_Art_and_or_What_is_Beauty\">philosophy</a>, <a href=\"https://plato.stanford.edu/entries/art-definition/\">academic</a> and finally landing on a&nbsp;<a href=\"https://www.theatlantic.com/entertainment/archive/2012/06/what-is-art-a-few-famous-definitions-from-antiquity-to-today/258871/\">site</a>&nbsp;showing famous people definitions of art.&nbsp;I will conclude there is no one definition for art and shall relate to how <a href=\"https://www.thoughtco.com/what-is-the-definition-of-art-182707\">Lisa Marder</a>&nbsp;explains:</p>\n<blockquote>\"... there is general consensus that&nbsp;art is the conscious creation of something beautiful or meaningful using skill and imagination\". <em>- Ways of Defining Arts, Lisa Marder</em></blockquote>\n<p><br></p>\n<p><strong>In the first place, why do we even&nbsp;love and appreciate art?</strong></p>\n<p>Now feel ourselves in the artists' world! Every art is incomplete, leaving a magical missing piece for us to relate. Completed only when we look, listen, feel or interact with it. Stirring the emotional power in us. Eliciting feelings of lightness,&nbsp;heaviness, numbness, spaciousness, sadness, dense, fear, shock, anger, hope, awe, to having profound realisation, inspirations and uncontrollable reactions.</p>\n<p>As for me, I am someone who can only appreciate and relate to arts where I can connect with. Drawing upon my intrinsic interpretation of skills and beauty.</p>\n<p>Now, my logic hat is put on.</p>\n<p>From a science point, we are social beings and naturally draw connections from things around us. Do you know the&nbsp;<a href=\"https://www.scientificamerican.com/article/the-mirror-neuron-revolut/\">mirror neurons in our brain help us understand actions, intentions and emotions of other people by imitating them</a>? When we receive an external stimulus like a painting, an inner simulation is created by the mirror neurons. Without having to physically experience it, we can relate to what emotions the painting is trying to invoke and even what the artist was experiencing.</p>\n<p>Art philosopher Denis Dutton spoke of artistic beauty not being entirely cultural in his&nbsp;<a href=\"https://www.ted.com/talks/denis_dutton_a_darwinian_theory_of_beauty/discussion#t-907396\">TED talk</a>:</p>\n<blockquote><em><strong>One fundamental traits of the ancestor personalities persists in our aesthetic cravings: the beauty we find in skilled performances... We find beauty in something done well.- Ted Talk: A Dwarwinian Theory of Beauty, Dennis Dutton</strong></em></blockquote>\n<p>It is in our genes, we are drawn to things skillfully done!</p>\n<p><br></p>\n<p><strong>Technology art is a new era.</strong></p>\n<p>For many decades, technology played a big role in facilitating creative arts. Interestingly, we are now beginning to see machines attempting to replace creative work which was long thought to be unique human talent.</p>\n<p>A short detour to quickly understand art from <a href=\"https://www.youtube.com/watch?v=bkWHrWw5yTg&amp;t=1s\">known history</a>&nbsp;and&nbsp;<a href=\"http://www.bu.edu/thenerve/archives/fall-2009/art-and-evolution/\">science</a>.</p>\n<p>Sprinting through the long history. Since the Bronze Age (~3,200BC), arts&nbsp;were used for honouring ancestors or beliefs in something greater than themselves. Age of Idealism (~900BC) was when arts begin to show individualism. From Middle Ages (~500AD) onwards, some common trends in the world were to use art for promoting religions, statuses and influencing masses to an ideology.</p>\n<p>A large part of how art progress seems to closely follow the spirit of the era. Finally, art since the 18th century had slowly evolved to discovering and expressing our own style and experiences today<strong>.</strong></p>\n<p>Outright lazy with a paraphrase from a good (long)&nbsp;<a href=\"http://www.bu.edu/thenerve/archives/fall-2009/art-and-evolution/\">neuroscience article</a>&nbsp;explaining art and evolution:&nbsp;<em>Most activities that are important for the survival of a species, such as eating and sex are pleasurable; human brains evolved mechanisms to reward and encourage these behaviours,&nbsp;promoting the passing on of genes. But humans can learn to tap directly into these neural reward systems.&nbsp;Humans can eat foods that have no nutritive value and have sex without reproducing. As cognitive psychologist Steven Pinker puts it, the arts respond to “a biologically pointless challenge: figuring out how to get at the pleasure buttons of the brain and deliver little jolts of enjoyment without the inconvenience of wringing real fitness increments from the harsh world”.</em>&nbsp;</p>\n<p><br></p>\n<p><strong>Art on its own means skill and craft.</strong></p>\n<p>Creative art includes mind and intuition; bringing disparate things together and finding meaning in them with skill and craft.These people are all using creative skills and crafts. Sculptors who crave, musicians who compose, artists who paint, scientists who discover through experimentations, businessmen who create whole new business landscapes, digital artists who produce creative work like film, music, paintings, web design.&nbsp;</p>\n<p><br></p>\n<p><strong>So can machine truly be an artistic creator?</strong></p>\n<p>After all these information. I would say yes! But in the case where humans are only involved in setting up and training the machine to create art. Finally, once a good algorithm has been learnt, the machine can create new artistic&nbsp;artworks without human inputs. In my opinion, this can mean creative art done by a machine.</p>\n<p>The rest of this post will be on using machine&nbsp;learning methods to create art. Specifically drawing and painting possibilities since I enjoy <a href=\"https://suslove.com/\">drawing</a>&nbsp;too!</p>\n<p><br></p>\n<p>A progressive flow on how human-assisted machine become an independent creator:</p>\n<ol>\n  <li><strong>Categorising style</strong> <em>- just sorting them out</em></li>\n  <li><strong>Transferring style </strong><em>- machine change images into a different style</em></li>\n  <li><strong>Suggesting/Designing style</strong> <em>- human and machine collaboration</em></li>\n  <li><strong>Creating new style</strong> <em>- machine own creation</em></li>\n</ol>\n<p><br></p>\n<p><br></p>\n<h3>1. Categorising style</h3>\n<p><br></p>\n<p>Categorising&nbsp;the style of an artwork using machine learning. Take an example of simply sorting art pieces into painting, drawing, graffiti, and sketching. Or even more complex sorting like what was used to create a painting; oil pastel, watercolour and colour pencils, and an artists' style, nuances and subtle characteristics.</p>\n<p>Classification method will be used for this form of sorting. Usually, deep learning (neural) network will be used for better accuracy.</p>\n<p>Categorising into various artists' style may get very debatable as most people will likely refer to well-known artists. When it comes to art, you never really know what a unique style is until the artist's arts are recognised. To complicate further, being recognised can refer to the whole world, within a country, within&nbsp;a community or even within an aspiring group.</p>\n<p>Another type of categorising artworks is to use unsupervised learning to cluster them into similar styles. An efficient way to find out different types of styles available when you have too many artworks data. Sometimes with <a href=\"https://artsexperiments.withgoogle.com/tags/\">surprising results</a> how the art pieces are similar in ways you never thought of before.</p>\n<p>&nbsp;</p>\n<p><br></p>\n<h3><strong>2. Transferring Styles</strong></h3>\n<p><br></p>\n<p><strong>Starting with single style transfer.</strong></p>\n<p>Style transfer is one of the earliest methods using neural network models (or deep learning) to create artistic images. Even though a lot of progress has been made in the last couple of years, it is still a new area with lots of research opportunities.</p>\n<p>The output image will keep its content but it resembles being created in a different style. The results are really promising from an artistic sense and the potential to recreate pictures in any style. An example below from Google Research Blog:</p>\n<p>https://3.bp.blogspot.com/-4Uj3hPFupok/VYIT6s_c9OI/AAAAAAAAAlc/_yGdbbsmGiw/s1600/ibis.png</p>\n<p>Left: Original photo by&nbsp;<a href=\"https://www.flickr.com/photos/zachievenor/8258092492/in/set-72157630014410078\"><em>Zachi Evenor</em></a><em>. Right: processed by Günther Noack, Software Engineer. </em>(Source: <a href=\"https://research.googleblog.com/2015/06/inceptionism-going-deeper-into-neural.html\">Inceptionism: Going Deeper into Neural Networks</a>)</p>\n<p>And style transfer on a video:</p>\n<p>https://www.youtube.com/watch?v=Khuj4ASldmU</p>\n<p><br></p>\n<p>Now a simple explanation on how deep learning (neural network) creates it.A deep learning network usually has many layers in it. We will start off with what is happening in each layer. When a picture is first being processed by the network, the lower layers will learn patterns such as colours, edges, shapes. As the layers go higher (deeper), it gradually learns more abstract, complex and fine details. The lower layer, when used to enhance an image, creates the effect you see in the photo above or more <a href=\"https://www.theverge.com/2017/3/30/15124466/ai-photo-style-transfer-deep-neural-nets-adobe\">here</a>.</p>\n<p>What details the layers are extracting are well illustrated here:</p>\n<p>https://adriancolyer.files.wordpress.com/2017/02/vis-cnns-fig-2.jpeg?w=566&amp;zoom=2 (Source: <a href=\"https://blog.acolyer.org/2017/02/27/understanding-generalisation-and-transfer-learning-in-deep-neural-networks/\">Understanding, generalisation, and transfer learning in deep neural&nbsp;networks</a>)</p>\n<p>Want to give it a try? Use this <a href=\"https://deepart.io/\">site</a>.</p>\n<p>As for those who know some basics on neural network. Instead of classifying the data, you are actually transforming the image you have input with the style you desire. By doing a gradient descent (minimisation) on the output image style loss with both the input image and chosen style. More information to <a href=\"https://medium.com/artists-and-machine-intelligence/neural-artistic-style-transfer-a-comprehensive-look-f54d8649c199\">read</a> or&nbsp;<a href=\"https://www.youtube.com/watch?v=Oex0eWoU7AQ\">watch</a>.&nbsp;</p>\n<p><br></p>\n<p><strong>To mixing different styles.</strong></p>\n<p>Most of us probably have a few favourite styles. Here is&nbsp;<a href=\"https://magenta.tensorflow.org/2016/11/01/multistyle-pastiche-generator\">multi-style pastiche generator</a>&nbsp;from Magenta Tensorflow illustrating how a photo can be recreated with different styles:</p>\n<p>Orginal Photo: After mixing styles:And a real-time multi-style app:https://www.youtube.com/watch?v=Ut5WYGi5yRU</p>\n<p><br></p>\n<p>The drawback of this style transfer is its inability to accurately recreate fine details. Sometimes you will want to retain the high resolution on faces and landscapes.There are already different methods (<a href=\"https://blog.paperspace.com/style-transfer-part-2/\">Markov Random Fields (MRFs), Champandard</a>&nbsp;and <a href=\"https://www.reddit.com/r/MachineLearning/comments/68y8bb/r_deep_image_analogy/\">K-Nearest Neighbor</a>) being explored to improve the resemblances of the original image fine details.</p>\n<p><br></p>\n<p><br></p>\n<h3>3. Suggesting / Designing style</h3>\n<p><br></p>\n<p>A collaboration between human and machines to create art. With machine assisting human through suggesting and designing styles together.</p>\n<p>Closest of style suggestion will be a nascent but promising one using assisted drawing. It seems to have the potential for many future possibilities. As for designing style, \"Vincent\" will be the latest development in this space. With DeepDream by Google having some aspects of co-designing too.</p>\n<p><br></p>\n<p><strong>Suggesting Style.</strong></p>\n<p>Design your drawing on a white space assisted by an AI bot. <a href=\"https://www.autodraw.com/\">AutoDraw</a>&nbsp;by Google does just that, in a form of clipart style doodling.</p>\n<p>A good thing about this is it allows you to design your drawing with a bot continuously suggesting pictures for your choosing. Sometimes with absurd suggestions which may expand your imaginations. Who knows?</p>\n<p>https://youtu.be/VwRbvVrUXTc&nbsp;</p>\n<p><br></p>\n<p><strong>Designing Style.</strong></p>\n<p>A few years ago, <a href=\"https://www.youtube.com/watch?v=Xy1Naexo3Bc\">machines are already able to improvise on classical music</a>. Now, Cambridge Consultants had come up with \"<a href=\"https://www.cambridgeconsultants.com/vincent\">Vincent</a>\" which builds on your sketch input. Creating art on&nbsp;white spaces with you.</p>\n<p>I would think Vincent is a mix of suggesting and co-designing art with humans. Using what it had learnt from thousands of Renaissance to current day paintings,&nbsp;Vincent will turn your sketch into a complete drawing. With the sketcher guiding and influencing Vincent on its output.</p>\n<p>Really like \"<a href=\"https://www.cambridgeconsultants.com/vincent\">Vincent</a>\"! I am calling it a sketcher's transformer:</p>\n<p>https://vimeo.com/234655275</p>\n<p>Vincent uses a relatively new neural network architecture call Generative Adversarial Networks (GANs) to improve what the networks are learning. Known for its accurate regeneration of photorealistic pictures. More information <a href=\"https://www.kdnuggets.com/2017/01/generative-adversarial-networks-hot-topic-machine-learning.html\">here</a> and <a href=\"https://www.analyticsvidhya.com/blog/2017/06/introductory-generative-adversarial-networks-gans/\">here</a>.&nbsp;</p>\n<p><br></p>\n<p>Next, is creating arts with DeepDream by Google.</p>\n<p>This method sometimes generates unexpected images. That's where the all the black box magic happens.</p>\n<p>In the hands of creatives, there are always ways to create cool stuff with them. Give the neural network model a tweak!&nbsp;Go deeper and mess around with the higher network layers.</p>\n<p>DeepDream is an interesting way to recreate a style likened to memory reconstruct. The output effects it creates have some aspects of co-design between human and machine.</p>\n<p>We will give the machine an image to design into something only it can relate. A glimpse at what happens using deep learning higher network layers on images (outputs look totally different!):</p>\n<p>https://steemitimages.com/DQmTbpqyLJ6WVHxsDb8CX73aPQfZBKb47XwMgUMU6fy4fBz/Screen%20Shot%202017-10-18%20at%2011.57.07%20AM.png (Source: <a href=\"https://photos.google.com/share/AF1QipPX0SCl7OzWilt9LnuQliattX4OUCj_8EP65_cTVnBmS1jnYgsGQAieQUc1VQWdgQ?key=aVBxWjhwSzg2RjJWLWRuVFBBZEN1d205bUdEMnhB\">Inceptionism: Going deeper into Neural Networks</a>)</p>\n<p>And videos using DeepDream (first with the lower layers, second with higher layers):</p>\n<p>https://www.youtube.com/watch?v=RTHPRrSEdNE</p>\n<p>https://www.youtube.com/watch?v=gIqKBBxmqho</p>\n<p>There is a website <a href=\"https://dreamdeeply.com/\">DreamDeeply</a>&nbsp;where you can try out deep dream images!</p>\n<p>Like me, you may feel deep dream images using lower neural network layers (video - Deep dreaming of Alice) seems similar to results using style transfer method. In actual, DeepDream is using a very different method.</p>\n<p>Instead of trying to classify a picture like what neural network usually perform, we will have to maximise the similarities the trained network layer found in the input image. Remember the lower and higher layers learn different types of details?</p>\n<p>If you have some basic understanding on Neural Network backpropagation. This <a href=\"https://www.youtube.com/watch?v=BsSmBPmPeYQ\">video</a> gives a good basic explanation on how it is done, also a <a href=\"https://youtu.be/MrBzgvUNr4w\">video</a>&nbsp;explaining it using Google Tensorflow.</p>\n<p>DeepDream creations using the higher layers drift away from more predictable creations. How the higher layers interpret a picture can sometimes change the output image completely into something else. The psychedelic effect of the output is a style of its own. Even though it is still limited to what the trained layers have learned, you may get surprising results!&nbsp;</p>\n<p><br></p>\n<p>Progress is neverending! An <a href=\"https://www.newscientist.com/article/2143784-ai-artist-conjures-up-convincing-fake-worlds-from-memories/\">interesting work</a> by <a href=\"http://cqf.io/\">Qifeng Chen</a> at Stanford University using memory reconstruct method to create dreamlike fake street. Create a scene by labelling the objects to be found in it. Leave the algorithm to reconstruct how it might look like in photo&nbsp;style.</p>\n<p>https://youtu.be/t169yNXX4oU</p>\n<h5><br></h5>\n<p><br></p>\n<h3><strong>4. Creating new styles</strong></h3>\n<p><br></p>\n<p>Without human assistance, can a machine learn to create a drawing or painting style of its own?</p>\n<p>My favourite Shimon can not only improvise music now but also create its <a href=\"https://www.youtube.com/watch?time_continue=4&amp;v=9qrUI-oPQlw\">own classical music</a>.</p>\n<p>Since I unable to find what creating a new drawing and painting styles mean to me. Let me explain my thoughts with a short story.</p>\n<p>For the last 12 months, Don has been sitting in the middle of a big bustling city park filled with beautiful perennial, seasonal flowers and sparse trees. Every day, Don takes in everything that happened in its 360 degrees line of vision. The colourful fun-filled park during the day and during the quiet late night, couples strolling to occasional mugging and vice activities.</p>\n<p>Don not only record what he sees but sort them all into information clusters through its algorithm. Its surrounding will be sorted every 30 seconds into weather, colours, people, animals, insects, sound, spatial, ongoing activities, up to 100 thousands different types of clusters. Creating new clusters when necessary. In each cluster, every piece of sorted information will have a very long list of features; covering different emotional states, level of significance in a situation, design principles, general elements of designs, colours and tones representation, and so on. Each feature has a weight given according to its correlations to what the information is about (eg: a kid laughing will have a higher weight on happiness feature).</p>\n<p>Each morning from 7am-8am, a crowd gathered around. Don's algorithm starts processing all the information it has sorted.Don then starts creating one art piece, reconstructing a random segment of the park. It decides on its own whether to use a computer-generated watercolour, oil pastel, sketch, photorealistic or a mixed style. The daily artwork generated is influenced by what was recorded during last one day, one week, one month and from the day Don was switched on in the park. Similar to our short, mid, long-term memories.</p>\n<p>With learning capabilities, Don can improve its skill through our feedback. After seeing Don's artwork, you decided to push the buttons to rate what feelings are invoked in you. After giving 10 emotions, you caught a sign below a camera reading,&nbsp; \"Love your feedback! Please note your ratings might be normalised if our camera detects significant inconsistencies between what you have rated and your facial expressions. This is to minimise trolling and incorrect data inputs for Don to learn.\"</p>\n<p>Don's first few weeks of artworks are a messy blend of activities happening in the day and night. Gradually over time, some artworks are beautifully blended as an expression of life in the park. When mugging happened the night before, Don thinks it is significant and traumatic enough, using darker shades and violent figures in its artwork. Some days you see a detailed and fine artwork, some days with a queer twist which you felt might indicate a lot of unexpected activities have happened over a period.</p>\n<p>People start calling it fake, spooky, nonsense, scam, artistic, talented, sick, awesome, on and on. Don doesn't care a bit! Only when it has recorded your reactions and words, the next artwork might to some extent be inspired by you.</p>\n<p>How will you think of Don the artist?&nbsp;</p>\n<p><br></p>\n<h3><strong>Will we appreciate fully machine-generated art?</strong></h3>\n<p><br></p>\n<p>Let's first take a look at how we have adapted to modern art after over a century and now a multi-billion dollars market. If you do a search, there are definitely many mixed feelings (more negative) for modern art.</p>\n<p>I would say art is very personal. A great piece of art might be perfect for many but there will always be someone who feels nothing special about it. When a piece of art is meant for you, it becomes a bridge between your inner world and the senses it invoked.</p>\n<p>Machine art will probably go through the same or even more challenging passage to social acceptance. Maybe we should also wonder how the unknown generation after <a href=\"http://time.com/4904288/igen-jean-m-twenge-review/\">iGen</a> will embrace arts.</p>\n<p>To end this, will be some questions to ponder on. If machine creates its own art without human inputs. Can we feel talent in machine artwork? Can we or acclaimed artists really appreciate an art piece or music created by a machine? Can we call even call it a \"Masterpiece\"?</p>\n</html>",
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2017/11/05 12:23:36
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2017/11/05 12:23:33
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2017/11/05 12:23:30
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2017/11/05 12:23:03
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2017/11/05 11:57:54
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bodyCongratulations @susdabble! You have completed some achievement on Steemit and have been rewarded with new badge(s) : [![](https://steemitimages.com/70x80/http://steemitboard.com/notifications/firstpost.png)](http://steemitboard.com/@susdabble) You published your First Post [![](https://steemitimages.com/70x80/http://steemitboard.com/notifications/firstvoted.png)](http://steemitboard.com/@susdabble) You got a First Vote Click on any badge to view your own Board of Honor on SteemitBoard. For more information about SteemitBoard, click [here](https://steemit.com/@steemitboard) If you no longer want to receive notifications, reply to this comment with the word `STOP` > By upvoting this notification, you can help all Steemit users. Learn how [here](https://steemit.com/steemitboard/@steemitboard/http-i-cubeupload-com-7ciqeo-png)!
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2017/11/05 10:21:24
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2017/11/05 10:20:09
parent author
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body<html> <p>https://steemitimages.com/DQmbmDnaE6grxVaop1JNMKdCRhNHycjS4vRF4r1V2uzci5E/Screen%20Shot%202017-10-30%20at%2011.00.35%20PM.png</p> <p>Machines learning to create artistic artworks. Humans learning to appreciate and enjoy their creations.</p> <p>There are&nbsp;<a href="https://magenta.tensorflow.org/welcome-to-magenta">Google Magenta</a>, <a href="https://experiments.withgoogle.com/arts-culture">Google Art Experiment</a>, <a href="https://ami.withgoogle.com/">Artist and Machine Intelligence</a>, <a href="https://research.googleblog.com/2015/06/inceptionism-going-deeper-into-neural.html">Deep Dream</a>, <a href="https://www.cambridgeconsultants.com/vincent">Vincent</a>&nbsp;around among others. All are important steps using machine learning to push arts frontier.&nbsp;</p> <p><br></p> <p><strong>Hold on, what do we understand about the word art?</strong></p> <p>After reading from <a href="https://en.oxforddictionaries.com/definition/art">oxford dictionary</a>, <a href="https://philosophynow.org/issues/108/What_is_Art_and_or_What_is_Beauty">philosophy</a>, <a href="https://plato.stanford.edu/entries/art-definition/">academic</a> and finally landing on a&nbsp;<a href="https://www.theatlantic.com/entertainment/archive/2012/06/what-is-art-a-few-famous-definitions-from-antiquity-to-today/258871/">site</a>&nbsp;showing famous people definitions of art.&nbsp;I will conclude there is no one definition for art and shall relate to how <a href="https://www.thoughtco.com/what-is-the-definition-of-art-182707">Lisa Marder</a>&nbsp;explains:</p> <blockquote>"... there is general consensus that&nbsp;art is the conscious creation of something beautiful or meaningful using skill and imagination". <em>- Ways of Defining Arts, Lisa Marder</em></blockquote> <p><br></p> <p><strong>In the first place, why do we even&nbsp;love and appreciate art?</strong></p> <p>Now feel ourselves in the artists' world! Every art is incomplete, leaving a magical missing piece for us to relate. Completed only when we look, listen, feel or interact with it. Stirring the emotional power in us. Eliciting feelings of lightness,&nbsp;heaviness, numbness, spaciousness, sadness, dense, fear, shock, anger, hope, awe, to having profound realisation, inspirations and uncontrollable reactions.</p> <p>As for me, I am someone who can only appreciate and relate to arts where I can connect with. Drawing upon my intrinsic interpretation of skills and beauty.</p> <p>Now, my logic hat is put on.</p> <p>From a science point, we are social beings and naturally draw connections from things around us. Do you know the&nbsp;<a href="https://www.scientificamerican.com/article/the-mirror-neuron-revolut/">mirror neurons in our brain help us understand actions, intentions and emotions of other people by imitating them</a>? When we receive an external stimulus like a painting, an inner simulation is created by the mirror neurons. Without having to physically experience it, we can relate to what emotions the painting is trying to invoke and even what the artist was experiencing.</p> <p>Art philosopher Denis Dutton spoke of artistic beauty not being entirely cultural in his&nbsp;<a href="https://www.ted.com/talks/denis_dutton_a_darwinian_theory_of_beauty/discussion#t-907396">TED talk</a>:</p> <blockquote><em><strong>One fundamental traits of the ancestor personalities persists in our aesthetic cravings: the beauty we find in skilled performances... We find beauty in something done well.- Ted Talk: A Dwarwinian Theory of Beauty, Dennis Dutton</strong></em></blockquote> <p>It is in our genes, we are drawn to things skillfully done!</p> <p><br></p> <p><strong>Technology art is a new era.</strong></p> <p>For many decades, technology played a big role in facilitating creative arts. Interestingly, we are now beginning to see machines attempting to replace creative work which was long thought to be unique human talent.</p> <p>A short detour to quickly understand art from <a href="https://www.youtube.com/watch?v=bkWHrWw5yTg&amp;t=1s">known history</a>&nbsp;and&nbsp;<a href="http://www.bu.edu/thenerve/archives/fall-2009/art-and-evolution/">science</a>.</p> <p>Sprinting through the long history. Since the Bronze Age (~3,200BC), arts&nbsp;were used for honouring ancestors or beliefs in something greater than themselves. Age of Idealism (~900BC) was when arts begin to show individualism. From Middle Ages (~500AD) onwards, some common trends in the world were to use art for promoting religions, statuses and influencing masses to an ideology.</p> <p>A large part of how art progress seems to closely follow the spirit of the era. Finally, art since the 18th century had slowly evolved to discovering and expressing our own style and experiences today<strong>.</strong></p> <p>Outright lazy with a paraphrase from a good (long)&nbsp;<a href="http://www.bu.edu/thenerve/archives/fall-2009/art-and-evolution/">neuroscience article</a>&nbsp;explaining art and evolution:&nbsp;<em>Most activities that are important for the survival of a species, such as eating and sex are pleasurable; human brains evolved mechanisms to reward and encourage these behaviours,&nbsp;promoting the passing on of genes. But humans can learn to tap directly into these neural reward systems.&nbsp;Humans can eat foods that have no nutritive value and have sex without reproducing. As cognitive psychologist Steven Pinker puts it, the arts respond to “a biologically pointless challenge: figuring out how to get at the pleasure buttons of the brain and deliver little jolts of enjoyment without the inconvenience of wringing real fitness increments from the harsh world”.</em>&nbsp;</p> <p><br></p> <p><strong>Art on its own means skill and craft.</strong></p> <p>Creative art includes mind and intuition; bringing disparate things together and finding meaning in them with skill and craft.These people are all using creative skills and crafts. Sculptors who crave, musicians who compose, artists who paint, scientists who discover through experimentations, businessmen who create whole new business landscapes, digital artists who produce creative work like film, music, paintings, web design.&nbsp;</p> <p><br></p> <p><strong>So can machine truly be an artistic creator?</strong></p> <p>After all these information. I would say yes! But in the case where humans are only involved in setting up and training the machine to create art. Finally, once a good algorithm has been learnt, the machine can create new artistic&nbsp;artworks without human inputs. In my opinion, this can mean creative art done by a machine.</p> <p>The rest of this post will be on using machine&nbsp;learning methods to create art. Specifically drawing and painting possibilities since I enjoy <a href="https://suslove.com/">drawing</a>&nbsp;too!</p> <p><br></p> <p>A progressive flow on how human-assisted machine become an independent creator:</p> <ol> <li><strong>Categorising style</strong> <em>- just sorting them out</em></li> <li><strong>Transferring style </strong><em>- machine change images into a different style</em></li> <li><strong>Suggesting/Designing style</strong> <em>- human and machine collaboration</em></li> <li><strong>Creating new style</strong> <em>- machine own creation</em></li> </ol> <p><br></p> <p><br></p> <h3>1. Categorising style</h3> <p><br></p> <p>Categorising&nbsp;the style of an artwork using machine learning. Take an example of simply sorting art pieces into painting, drawing, graffiti, and sketching. Or even more complex sorting like what was used to create a painting; oil pastel, watercolour and colour pencils, and an artists' style, nuances and subtle characteristics.</p> <p>Classification method will be used for this form of sorting. Usually, deep learning (neural) network will be used for better accuracy.</p> <p>Categorising into various artists' style may get very debatable as most people will likely refer to well-known artists. When it comes to art, you never really know what a unique style is until the artist's arts are recognised. To complicate further, being recognised can refer to the whole world, within a country, within&nbsp;a community or even within an aspiring group.</p> <p>Another type of categorising artworks is to use unsupervised learning to cluster them into similar styles. An efficient way to find out different types of styles available when you have too many artworks data. Sometimes with <a href="https://artsexperiments.withgoogle.com/tags/">surprising results</a> how the art pieces are similar in ways you never thought of before.</p> <p>&nbsp;</p> <p><br></p> <h3><strong>2. Transferring Styles</strong></h3> <p><br></p> <p><strong>Starting with single style transfer.</strong></p> <p>Style transfer is one of the earliest methods using neural network models (or deep learning) to create artistic images. Even though a lot of progress has been made in the last couple of years, it is still a new area with lots of research opportunities.</p> <p>The output image will keep its content but it resembles being created in a different style. The results are really promising from an artistic sense and the potential to recreate pictures in any style. An example below from Google Research Blog:</p> <p>https://3.bp.blogspot.com/-4Uj3hPFupok/VYIT6s_c9OI/AAAAAAAAAlc/_yGdbbsmGiw/s1600/ibis.png</p> <p>Left: Original photo by&nbsp;<a href="https://www.flickr.com/photos/zachievenor/8258092492/in/set-72157630014410078"><em>Zachi Evenor</em></a><em>. Right: processed by Günther Noack, Software Engineer. </em>(Source: <a href="https://research.googleblog.com/2015/06/inceptionism-going-deeper-into-neural.html">Inceptionism: Going Deeper into Neural Networks</a>)</p> <p>And style transfer on a video:</p> <p>https://www.youtube.com/watch?v=Khuj4ASldmU</p> <p><br></p> <p>Now a simple explanation on how deep learning (neural network) creates it.A deep learning network usually has many layers in it. We will start off with what is happening in each layer. When a picture is first being processed by the network, the lower layers will learn patterns such as colours, edges, shapes. As the layers go higher (deeper), it gradually learns more abstract, complex and fine details. The lower layer, when used to enhance an image, creates the effect you see in the photo above or more <a href="https://www.theverge.com/2017/3/30/15124466/ai-photo-style-transfer-deep-neural-nets-adobe">here</a>.</p> <p>What details the layers are extracting are well illustrated here:</p> <p>https://adriancolyer.files.wordpress.com/2017/02/vis-cnns-fig-2.jpeg?w=566&amp;zoom=2 (Source: <a href="https://blog.acolyer.org/2017/02/27/understanding-generalisation-and-transfer-learning-in-deep-neural-networks/">Understanding, generalisation, and transfer learning in deep neural&nbsp;networks</a>)</p> <p>Want to give it a try? Use this <a href="https://deepart.io/">site</a>.</p> <p>As for those who know some basics on neural network. Instead of classifying the data, you are actually transforming the image you have input with the style you desire. By doing a gradient descent (minimisation) on the output image style loss with both the input image and chosen style. More information to <a href="https://medium.com/artists-and-machine-intelligence/neural-artistic-style-transfer-a-comprehensive-look-f54d8649c199">read</a> or&nbsp;<a href="https://www.youtube.com/watch?v=Oex0eWoU7AQ">watch</a>.&nbsp;</p> <p><br></p> <p><strong>To mixing different styles.</strong></p> <p>Most of us probably have a few favourite styles. Here is&nbsp;<a href="https://magenta.tensorflow.org/2016/11/01/multistyle-pastiche-generator">multi-style pastiche generator</a>&nbsp;from Magenta Tensorflow illustrating how a photo can be recreated with different styles:</p> <p>Orginal Photo: After mixing styles:And a real-time multi-style app:https://www.youtube.com/watch?v=Ut5WYGi5yRU</p> <p><br></p> <p>The drawback of this style transfer is its inability to accurately recreate fine details. Sometimes you will want to retain the high resolution on faces and landscapes.There are already different methods (<a href="https://blog.paperspace.com/style-transfer-part-2/">Markov Random Fields (MRFs), Champandard</a>&nbsp;and <a href="https://www.reddit.com/r/MachineLearning/comments/68y8bb/r_deep_image_analogy/">K-Nearest Neighbor</a>) being explored to improve the resemblances of the original image fine details.</p> <p><br></p> <p><br></p> <h3>3. Suggesting / Designing style</h3> <p><br></p> <p>A collaboration between human and machines to create art. With machine assisting human through suggesting and designing styles together.</p> <p>Closest of style suggestion will be a nascent but promising one using assisted drawing. It seems to have the potential for many future possibilities. As for designing style, "Vincent" will be the latest development in this space. With DeepDream by Google having some aspects of co-designing too.</p> <p><br></p> <p><strong>Suggesting Style.</strong></p> <p>Design your drawing on a white space assisted by an AI bot. <a href="https://www.autodraw.com/">AutoDraw</a>&nbsp;by Google does just that, in a form of clipart style doodling.</p> <p>A good thing about this is it allows you to design your drawing with a bot continuously suggesting pictures for your choosing. Sometimes with absurd suggestions which may expand your imaginations. Who knows?</p> <p>https://youtu.be/VwRbvVrUXTc&nbsp;</p> <p><br></p> <p><strong>Designing Style.</strong></p> <p>A few years ago, <a href="https://www.youtube.com/watch?v=Xy1Naexo3Bc">machines are already able to improvise on classical music</a>. Now, Cambridge Consultants had come up with "<a href="https://www.cambridgeconsultants.com/vincent">Vincent</a>" which builds on your sketch input. Creating art on&nbsp;white spaces with you.</p> <p>I would think Vincent is a mix of suggesting and co-designing art with humans. Using what it had learnt from thousands of Renaissance to current day paintings,&nbsp;Vincent will turn your sketch into a complete drawing. With the sketcher guiding and influencing Vincent on its output.</p> <p>Really like "<a href="https://www.cambridgeconsultants.com/vincent">Vincent</a>"! I am calling it a sketcher's transformer:</p> <p>https://vimeo.com/234655275</p> <p>Vincent uses a relatively new neural network architecture call Generative Adversarial Networks (GANs) to improve what the networks are learning. Known for its accurate regeneration of photorealistic pictures. More information <a href="https://www.kdnuggets.com/2017/01/generative-adversarial-networks-hot-topic-machine-learning.html">here</a> and <a href="https://www.analyticsvidhya.com/blog/2017/06/introductory-generative-adversarial-networks-gans/">here</a>.&nbsp;</p> <p><br></p> <p>Next, is creating arts with DeepDream by Google.</p> <p>This method sometimes generates unexpected images. That's where the all the black box magic happens.</p> <p>In the hands of creatives, there are always ways to create cool stuff with them. Give the neural network model a tweak!&nbsp;Go deeper and mess around with the higher network layers.</p> <p>DeepDream is an interesting way to recreate a style likened to memory reconstruct. The output effects it creates have some aspects of co-design between human and machine.</p> <p>We will give the machine an image to design into something only it can relate. A glimpse at what happens using deep learning higher network layers on images (outputs look totally different!):</p> <p>https://steemitimages.com/DQmTbpqyLJ6WVHxsDb8CX73aPQfZBKb47XwMgUMU6fy4fBz/Screen%20Shot%202017-10-18%20at%2011.57.07%20AM.png (Source: <a href="https://photos.google.com/share/AF1QipPX0SCl7OzWilt9LnuQliattX4OUCj_8EP65_cTVnBmS1jnYgsGQAieQUc1VQWdgQ?key=aVBxWjhwSzg2RjJWLWRuVFBBZEN1d205bUdEMnhB">Inceptionism: Going deeper into Neural Networks</a>)</p> <p>And videos using DeepDream (first with the lower layers, second with higher layers):</p> <p>https://www.youtube.com/watch?v=RTHPRrSEdNE</p> <p>https://www.youtube.com/watch?v=gIqKBBxmqho</p> <p>There is a website <a href="https://dreamdeeply.com/">DreamDeeply</a>&nbsp;where you can try out deep dream images!</p> <p>Like me, you may feel deep dream images using lower neural network layers (video - Deep dreaming of Alice) seems similar to results using style transfer method. In actual, DeepDream is using a very different method.</p> <p>Instead of trying to classify a picture like what neural network usually perform, we will have to maximise the similarities the trained network layer found in the input image. Remember the lower and higher layers learn different types of details?</p> <p>If you have some basic understanding on Neural Network backpropagation. This <a href="https://www.youtube.com/watch?v=BsSmBPmPeYQ">video</a> gives a good basic explanation on how it is done, also a <a href="https://youtu.be/MrBzgvUNr4w">video</a>&nbsp;explaining it using Google Tensorflow.</p> <p>DeepDream creations using the higher layers drift away from more predictable creations. How the higher layers interpret a picture can sometimes change the output image completely into something else. The psychedelic effect of the output is a style of its own. Even though it is still limited to what the trained layers have learned, you may get surprising results!&nbsp;</p> <p><br></p> <p>Progress is neverending! An <a href="https://www.newscientist.com/article/2143784-ai-artist-conjures-up-convincing-fake-worlds-from-memories/">interesting work</a> by <a href="http://cqf.io/">Qifeng Chen</a> at Stanford University using memory reconstruct method to create dreamlike fake street. Create a scene by labelling the objects to be found in it. Leave the algorithm to reconstruct how it might look like in photo&nbsp;style.</p> <p>https://youtu.be/t169yNXX4oU</p> <h5><br></h5> <p><br></p> <h3><strong>4. Creating new styles</strong></h3> <p><br></p> <p>Without human assistance, can a machine learn to create a drawing or painting style of its own?</p> <p>My favourite Shimon can not only improvise music now but also create its <a href="https://www.youtube.com/watch?time_continue=4&amp;v=9qrUI-oPQlw">own classical music</a>.</p> <p>Since I unable to find what creating a new drawing and painting styles mean to me. Let me explain my thoughts with a short story.</p> <p>For the last 12 months, Don has been sitting in the middle of a big bustling city park filled with beautiful perennial, seasonal flowers and sparse trees. Every day, Don takes in everything that happened in its 360 degrees line of vision. The colourful fun-filled park during the day and during the quiet late night, couples strolling to occasional mugging and vice activities.</p> <p>Don not only record what he sees but sort them all into information clusters through its algorithm. Its surrounding will be sorted every 30 seconds into weather, colours, people, animals, insects, sound, spatial, ongoing activities, up to 100 thousands different types of clusters. Creating new clusters when necessary. In each cluster, every piece of sorted information will have a very long list of features; covering different emotional states, level of significance in a situation, design principles, general elements of designs, colours and tones representation, and so on. Each feature has a weight given according to its correlations to what the information is about (eg: a kid laughing will have a higher weight on happiness feature).</p> <p>Each morning from 7am-8am, a crowd gathered around. Don's algorithm starts processing all the information it has sorted.Don then starts creating one art piece, reconstructing a random segment of the park. It decides on its own whether to use a computer-generated watercolour, oil pastel, sketch, photorealistic or a mixed style. The daily artwork generated is influenced by what was recorded during last one day, one week, one month and from the day Don was switched on in the park. Similar to our short, mid, long-term memories.</p> <p>With learning capabilities, Don can improve its skill through our feedback. After seeing Don's artwork, you decided to push the buttons to rate what feelings are invoked in you. After giving 10 emotions, you caught a sign below a camera reading,&nbsp; "Love your feedback! Please note your ratings might be normalised if our camera detects significant inconsistencies between what you have rated and your facial expressions. This is to minimise trolling and incorrect data inputs for Don to learn."</p> <p>Don's first few weeks of artworks are a messy blend of activities happening in the day and night. Gradually over time, some artworks are beautifully blended as an expression of life in the park. When mugging happened the night before, Don thinks it is significant and traumatic enough, using darker shades and violent figures in its artwork. Some days you see a detailed and fine artwork, some days with a queer twist which you felt might indicate a lot of unexpected activities have happened over a period.</p> <p>People start calling it fake, spooky, nonsense, scam, artistic, talented, sick, awesome, on and on. Don doesn't care a bit! Only when it has recorded your reactions and words, the next artwork might to some extent be inspired by you.</p> <p>How will you think of Don the artist?&nbsp;</p> <p><br></p> <h3><strong>Will we appreciate fully machine-generated art?</strong></h3> <p><br></p> <p>Let's first take a look at how we have adapted to modern art after over a century and now a multi-billion dollars market. If you do a search, there are definitely many mixed feelings (more negative) for modern art.</p> <p>I would say art is very personal. A great piece of art might be perfect for many but there will always be someone who feels nothing special about it. When a piece of art is meant for you, it becomes a bridge between your inner world and the senses it invoked.</p> <p>Machine art will probably go through the same or even more challenging passage to social acceptance. Maybe we should also wonder how the unknown generation after <a href="http://time.com/4904288/igen-jean-m-twenge-review/">iGen</a> will embrace arts.</p> <p>To end this, will be some questions to ponder on. If machine creates its own art without human inputs. Can we feel talent in machine artwork? Can we or acclaimed artists really appreciate an art piece or music created by a machine? Can we call even call it a "Masterpiece"?</p> </html>
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Transaction InfoBlock #16953127/Trx 1ead7b9eab0062ff2df9ae7330748836c1858888
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  "trx_id": "1ead7b9eab0062ff2df9ae7330748836c1858888",
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  "timestamp": "2017-11-05T10:20:09",
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    "comment",
    {
      "parent_author": "",
      "parent_permlink": "art",
      "author": "susdabble",
      "permlink": "ju4sg-machine-learning-artistic",
      "title": "Machine Learning Artistic",
      "body": "<html>\n<p>https://steemitimages.com/DQmbmDnaE6grxVaop1JNMKdCRhNHycjS4vRF4r1V2uzci5E/Screen%20Shot%202017-10-30%20at%2011.00.35%20PM.png</p>\n<p>Machines learning to create artistic artworks. Humans learning to appreciate and enjoy their creations.</p>\n<p>There are&nbsp;<a href=\"https://magenta.tensorflow.org/welcome-to-magenta\">Google Magenta</a>, <a href=\"https://experiments.withgoogle.com/arts-culture\">Google Art Experiment</a>, <a href=\"https://ami.withgoogle.com/\">Artist and Machine Intelligence</a>, <a href=\"https://research.googleblog.com/2015/06/inceptionism-going-deeper-into-neural.html\">Deep Dream</a>, <a href=\"https://www.cambridgeconsultants.com/vincent\">Vincent</a>&nbsp;around among others. All are important steps using machine learning to push arts frontier.&nbsp;</p>\n<p><br></p>\n<p><strong>Hold on, what do we understand about the word art?</strong></p>\n<p>After reading from <a href=\"https://en.oxforddictionaries.com/definition/art\">oxford dictionary</a>, <a href=\"https://philosophynow.org/issues/108/What_is_Art_and_or_What_is_Beauty\">philosophy</a>, <a href=\"https://plato.stanford.edu/entries/art-definition/\">academic</a> and finally landing on a&nbsp;<a href=\"https://www.theatlantic.com/entertainment/archive/2012/06/what-is-art-a-few-famous-definitions-from-antiquity-to-today/258871/\">site</a>&nbsp;showing famous people definitions of art.&nbsp;I will conclude there is no one definition for art and shall relate to how <a href=\"https://www.thoughtco.com/what-is-the-definition-of-art-182707\">Lisa Marder</a>&nbsp;explains:</p>\n<blockquote>\"... there is general consensus that&nbsp;art is the conscious creation of something beautiful or meaningful using skill and imagination\". <em>- Ways of Defining Arts, Lisa Marder</em></blockquote>\n<p><br></p>\n<p><strong>In the first place, why do we even&nbsp;love and appreciate art?</strong></p>\n<p>Now feel ourselves in the artists' world! Every art is incomplete, leaving a magical missing piece for us to relate. Completed only when we look, listen, feel or interact with it. Stirring the emotional power in us. Eliciting feelings of lightness,&nbsp;heaviness, numbness, spaciousness, sadness, dense, fear, shock, anger, hope, awe, to having profound realisation, inspirations and uncontrollable reactions.</p>\n<p>As for me, I am someone who can only appreciate and relate to arts where I can connect with. Drawing upon my intrinsic interpretation of skills and beauty.</p>\n<p>Now, my logic hat is put on.</p>\n<p>From a science point, we are social beings and naturally draw connections from things around us. Do you know the&nbsp;<a href=\"https://www.scientificamerican.com/article/the-mirror-neuron-revolut/\">mirror neurons in our brain help us understand actions, intentions and emotions of other people by imitating them</a>? When we receive an external stimulus like a painting, an inner simulation is created by the mirror neurons. Without having to physically experience it, we can relate to what emotions the painting is trying to invoke and even what the artist was experiencing.</p>\n<p>Art philosopher Denis Dutton spoke of artistic beauty not being entirely cultural in his&nbsp;<a href=\"https://www.ted.com/talks/denis_dutton_a_darwinian_theory_of_beauty/discussion#t-907396\">TED talk</a>:</p>\n<blockquote><em><strong>One fundamental traits of the ancestor personalities persists in our aesthetic cravings: the beauty we find in skilled performances... We find beauty in something done well.- Ted Talk: A Dwarwinian Theory of Beauty, Dennis Dutton</strong></em></blockquote>\n<p>It is in our genes, we are drawn to things skillfully done!</p>\n<p><br></p>\n<p><strong>Technology art is a new era.</strong></p>\n<p>For many decades, technology played a big role in facilitating creative arts. Interestingly, we are now beginning to see machines attempting to replace creative work which was long thought to be unique human talent.</p>\n<p>A short detour to quickly understand art from <a href=\"https://www.youtube.com/watch?v=bkWHrWw5yTg&amp;t=1s\">known history</a>&nbsp;and&nbsp;<a href=\"http://www.bu.edu/thenerve/archives/fall-2009/art-and-evolution/\">science</a>.</p>\n<p>Sprinting through the long history. Since the Bronze Age (~3,200BC), arts&nbsp;were used for honouring ancestors or beliefs in something greater than themselves. Age of Idealism (~900BC) was when arts begin to show individualism. From Middle Ages (~500AD) onwards, some common trends in the world were to use art for promoting religions, statuses and influencing masses to an ideology.</p>\n<p>A large part of how art progress seems to closely follow the spirit of the era. Finally, art since the 18th century had slowly evolved to discovering and expressing our own style and experiences today<strong>.</strong></p>\n<p>Outright lazy with a paraphrase from a good (long)&nbsp;<a href=\"http://www.bu.edu/thenerve/archives/fall-2009/art-and-evolution/\">neuroscience article</a>&nbsp;explaining art and evolution:&nbsp;<em>Most activities that are important for the survival of a species, such as eating and sex are pleasurable; human brains evolved mechanisms to reward and encourage these behaviours,&nbsp;promoting the passing on of genes. But humans can learn to tap directly into these neural reward systems.&nbsp;Humans can eat foods that have no nutritive value and have sex without reproducing. As cognitive psychologist Steven Pinker puts it, the arts respond to “a biologically pointless challenge: figuring out how to get at the pleasure buttons of the brain and deliver little jolts of enjoyment without the inconvenience of wringing real fitness increments from the harsh world”.</em>&nbsp;</p>\n<p><br></p>\n<p><strong>Art on its own means skill and craft.</strong></p>\n<p>Creative art includes mind and intuition; bringing disparate things together and finding meaning in them with skill and craft.These people are all using creative skills and crafts. Sculptors who crave, musicians who compose, artists who paint, scientists who discover through experimentations, businessmen who create whole new business landscapes, digital artists who produce creative work like film, music, paintings, web design.&nbsp;</p>\n<p><br></p>\n<p><strong>So can machine truly be an artistic creator?</strong></p>\n<p>After all these information. I would say yes! But in the case where humans are only involved in setting up and training the machine to create art. Finally, once a good algorithm has been learnt, the machine can create new artistic&nbsp;artworks without human inputs. In my opinion, this can mean creative art done by a machine.</p>\n<p>The rest of this post will be on using machine&nbsp;learning methods to create art. Specifically drawing and painting possibilities since I enjoy <a href=\"https://suslove.com/\">drawing</a>&nbsp;too!</p>\n<p><br></p>\n<p>A progressive flow on how human-assisted machine become an independent creator:</p>\n<ol>\n  <li><strong>Categorising style</strong> <em>- just sorting them out</em></li>\n  <li><strong>Transferring style </strong><em>- machine change images into a different style</em></li>\n  <li><strong>Suggesting/Designing style</strong> <em>- human and machine collaboration</em></li>\n  <li><strong>Creating new style</strong> <em>- machine own creation</em></li>\n</ol>\n<p><br></p>\n<p><br></p>\n<h3>1. Categorising style</h3>\n<p><br></p>\n<p>Categorising&nbsp;the style of an artwork using machine learning. Take an example of simply sorting art pieces into painting, drawing, graffiti, and sketching. Or even more complex sorting like what was used to create a painting; oil pastel, watercolour and colour pencils, and an artists' style, nuances and subtle characteristics.</p>\n<p>Classification method will be used for this form of sorting. Usually, deep learning (neural) network will be used for better accuracy.</p>\n<p>Categorising into various artists' style may get very debatable as most people will likely refer to well-known artists. When it comes to art, you never really know what a unique style is until the artist's arts are recognised. To complicate further, being recognised can refer to the whole world, within a country, within&nbsp;a community or even within an aspiring group.</p>\n<p>Another type of categorising artworks is to use unsupervised learning to cluster them into similar styles. An efficient way to find out different types of styles available when you have too many artworks data. Sometimes with <a href=\"https://artsexperiments.withgoogle.com/tags/\">surprising results</a> how the art pieces are similar in ways you never thought of before.</p>\n<p>&nbsp;</p>\n<p><br></p>\n<h3><strong>2. Transferring Styles</strong></h3>\n<p><br></p>\n<p><strong>Starting with single style transfer.</strong></p>\n<p>Style transfer is one of the earliest methods using neural network models (or deep learning) to create artistic images. Even though a lot of progress has been made in the last couple of years, it is still a new area with lots of research opportunities.</p>\n<p>The output image will keep its content but it resembles being created in a different style. The results are really promising from an artistic sense and the potential to recreate pictures in any style. An example below from Google Research Blog:</p>\n<p>https://3.bp.blogspot.com/-4Uj3hPFupok/VYIT6s_c9OI/AAAAAAAAAlc/_yGdbbsmGiw/s1600/ibis.png</p>\n<p>Left: Original photo by&nbsp;<a href=\"https://www.flickr.com/photos/zachievenor/8258092492/in/set-72157630014410078\"><em>Zachi Evenor</em></a><em>. Right: processed by Günther Noack, Software Engineer. </em>(Source: <a href=\"https://research.googleblog.com/2015/06/inceptionism-going-deeper-into-neural.html\">Inceptionism: Going Deeper into Neural Networks</a>)</p>\n<p>And style transfer on a video:</p>\n<p>https://www.youtube.com/watch?v=Khuj4ASldmU</p>\n<p><br></p>\n<p>Now a simple explanation on how deep learning (neural network) creates it.A deep learning network usually has many layers in it. We will start off with what is happening in each layer. When a picture is first being processed by the network, the lower layers will learn patterns such as colours, edges, shapes. As the layers go higher (deeper), it gradually learns more abstract, complex and fine details. The lower layer, when used to enhance an image, creates the effect you see in the photo above or more <a href=\"https://www.theverge.com/2017/3/30/15124466/ai-photo-style-transfer-deep-neural-nets-adobe\">here</a>.</p>\n<p>What details the layers are extracting are well illustrated here:</p>\n<p>https://adriancolyer.files.wordpress.com/2017/02/vis-cnns-fig-2.jpeg?w=566&amp;zoom=2 (Source: <a href=\"https://blog.acolyer.org/2017/02/27/understanding-generalisation-and-transfer-learning-in-deep-neural-networks/\">Understanding, generalisation, and transfer learning in deep neural&nbsp;networks</a>)</p>\n<p>Want to give it a try? Use this <a href=\"https://deepart.io/\">site</a>.</p>\n<p>As for those who know some basics on neural network. Instead of classifying the data, you are actually transforming the image you have input with the style you desire. By doing a gradient descent (minimisation) on the output image style loss with both the input image and chosen style. More information to <a href=\"https://medium.com/artists-and-machine-intelligence/neural-artistic-style-transfer-a-comprehensive-look-f54d8649c199\">read</a> or&nbsp;<a href=\"https://www.youtube.com/watch?v=Oex0eWoU7AQ\">watch</a>.&nbsp;</p>\n<p><br></p>\n<p><strong>To mixing different styles.</strong></p>\n<p>Most of us probably have a few favourite styles. Here is&nbsp;<a href=\"https://magenta.tensorflow.org/2016/11/01/multistyle-pastiche-generator\">multi-style pastiche generator</a>&nbsp;from Magenta Tensorflow illustrating how a photo can be recreated with different styles:</p>\n<p>Orginal Photo: After mixing styles:And a real-time multi-style app:https://www.youtube.com/watch?v=Ut5WYGi5yRU</p>\n<p><br></p>\n<p>The drawback of this style transfer is its inability to accurately recreate fine details. Sometimes you will want to retain the high resolution on faces and landscapes.There are already different methods (<a href=\"https://blog.paperspace.com/style-transfer-part-2/\">Markov Random Fields (MRFs), Champandard</a>&nbsp;and <a href=\"https://www.reddit.com/r/MachineLearning/comments/68y8bb/r_deep_image_analogy/\">K-Nearest Neighbor</a>) being explored to improve the resemblances of the original image fine details.</p>\n<p><br></p>\n<p><br></p>\n<h3>3. Suggesting / Designing style</h3>\n<p><br></p>\n<p>A collaboration between human and machines to create art. With machine assisting human through suggesting and designing styles together.</p>\n<p>Closest of style suggestion will be a nascent but promising one using assisted drawing. It seems to have the potential for many future possibilities. As for designing style, \"Vincent\" will be the latest development in this space. With DeepDream by Google having some aspects of co-designing too.</p>\n<p><br></p>\n<p><strong>Suggesting Style.</strong></p>\n<p>Design your drawing on a white space assisted by an AI bot. <a href=\"https://www.autodraw.com/\">AutoDraw</a>&nbsp;by Google does just that, in a form of clipart style doodling.</p>\n<p>A good thing about this is it allows you to design your drawing with a bot continuously suggesting pictures for your choosing. Sometimes with absurd suggestions which may expand your imaginations. Who knows?</p>\n<p>https://youtu.be/VwRbvVrUXTc&nbsp;</p>\n<p><br></p>\n<p><strong>Designing Style.</strong></p>\n<p>A few years ago, <a href=\"https://www.youtube.com/watch?v=Xy1Naexo3Bc\">machines are already able to improvise on classical music</a>. Now, Cambridge Consultants had come up with \"<a href=\"https://www.cambridgeconsultants.com/vincent\">Vincent</a>\" which builds on your sketch input. Creating art on&nbsp;white spaces with you.</p>\n<p>I would think Vincent is a mix of suggesting and co-designing art with humans. Using what it had learnt from thousands of Renaissance to current day paintings,&nbsp;Vincent will turn your sketch into a complete drawing. With the sketcher guiding and influencing Vincent on its output.</p>\n<p>Really like \"<a href=\"https://www.cambridgeconsultants.com/vincent\">Vincent</a>\"! I am calling it a sketcher's transformer:</p>\n<p>https://vimeo.com/234655275</p>\n<p>Vincent uses a relatively new neural network architecture call Generative Adversarial Networks (GANs) to improve what the networks are learning. Known for its accurate regeneration of photorealistic pictures. More information <a href=\"https://www.kdnuggets.com/2017/01/generative-adversarial-networks-hot-topic-machine-learning.html\">here</a> and <a href=\"https://www.analyticsvidhya.com/blog/2017/06/introductory-generative-adversarial-networks-gans/\">here</a>.&nbsp;</p>\n<p><br></p>\n<p>Next, is creating arts with DeepDream by Google.</p>\n<p>This method sometimes generates unexpected images. That's where the all the black box magic happens.</p>\n<p>In the hands of creatives, there are always ways to create cool stuff with them. Give the neural network model a tweak!&nbsp;Go deeper and mess around with the higher network layers.</p>\n<p>DeepDream is an interesting way to recreate a style likened to memory reconstruct. The output effects it creates have some aspects of co-design between human and machine.</p>\n<p>We will give the machine an image to design into something only it can relate. A glimpse at what happens using deep learning higher network layers on images (outputs look totally different!):</p>\n<p>https://steemitimages.com/DQmTbpqyLJ6WVHxsDb8CX73aPQfZBKb47XwMgUMU6fy4fBz/Screen%20Shot%202017-10-18%20at%2011.57.07%20AM.png (Source: <a href=\"https://photos.google.com/share/AF1QipPX0SCl7OzWilt9LnuQliattX4OUCj_8EP65_cTVnBmS1jnYgsGQAieQUc1VQWdgQ?key=aVBxWjhwSzg2RjJWLWRuVFBBZEN1d205bUdEMnhB\">Inceptionism: Going deeper into Neural Networks</a>)</p>\n<p>And videos using DeepDream (first with the lower layers, second with higher layers):</p>\n<p>https://www.youtube.com/watch?v=RTHPRrSEdNE</p>\n<p>https://www.youtube.com/watch?v=gIqKBBxmqho</p>\n<p>There is a website <a href=\"https://dreamdeeply.com/\">DreamDeeply</a>&nbsp;where you can try out deep dream images!</p>\n<p>Like me, you may feel deep dream images using lower neural network layers (video - Deep dreaming of Alice) seems similar to results using style transfer method. In actual, DeepDream is using a very different method.</p>\n<p>Instead of trying to classify a picture like what neural network usually perform, we will have to maximise the similarities the trained network layer found in the input image. Remember the lower and higher layers learn different types of details?</p>\n<p>If you have some basic understanding on Neural Network backpropagation. This <a href=\"https://www.youtube.com/watch?v=BsSmBPmPeYQ\">video</a> gives a good basic explanation on how it is done, also a <a href=\"https://youtu.be/MrBzgvUNr4w\">video</a>&nbsp;explaining it using Google Tensorflow.</p>\n<p>DeepDream creations using the higher layers drift away from more predictable creations. How the higher layers interpret a picture can sometimes change the output image completely into something else. The psychedelic effect of the output is a style of its own. Even though it is still limited to what the trained layers have learned, you may get surprising results!&nbsp;</p>\n<p><br></p>\n<p>Progress is neverending! An <a href=\"https://www.newscientist.com/article/2143784-ai-artist-conjures-up-convincing-fake-worlds-from-memories/\">interesting work</a> by <a href=\"http://cqf.io/\">Qifeng Chen</a> at Stanford University using memory reconstruct method to create dreamlike fake street. Create a scene by labelling the objects to be found in it. Leave the algorithm to reconstruct how it might look like in photo&nbsp;style.</p>\n<p>https://youtu.be/t169yNXX4oU</p>\n<h5><br></h5>\n<p><br></p>\n<h3><strong>4. Creating new styles</strong></h3>\n<p><br></p>\n<p>Without human assistance, can a machine learn to create a drawing or painting style of its own?</p>\n<p>My favourite Shimon can not only improvise music now but also create its <a href=\"https://www.youtube.com/watch?time_continue=4&amp;v=9qrUI-oPQlw\">own classical music</a>.</p>\n<p>Since I unable to find what creating a new drawing and painting styles mean to me. Let me explain my thoughts with a short story.</p>\n<p>For the last 12 months, Don has been sitting in the middle of a big bustling city park filled with beautiful perennial, seasonal flowers and sparse trees. Every day, Don takes in everything that happened in its 360 degrees line of vision. The colourful fun-filled park during the day and during the quiet late night, couples strolling to occasional mugging and vice activities.</p>\n<p>Don not only record what he sees but sort them all into information clusters through its algorithm. Its surrounding will be sorted every 30 seconds into weather, colours, people, animals, insects, sound, spatial, ongoing activities, up to 100 thousands different types of clusters. Creating new clusters when necessary. In each cluster, every piece of sorted information will have a very long list of features; covering different emotional states, level of significance in a situation, design principles, general elements of designs, colours and tones representation, and so on. Each feature has a weight given according to its correlations to what the information is about (eg: a kid laughing will have a higher weight on happiness feature).</p>\n<p>Each morning from 7am-8am, a crowd gathered around. Don's algorithm starts processing all the information it has sorted.Don then starts creating one art piece, reconstructing a random segment of the park. It decides on its own whether to use a computer-generated watercolour, oil pastel, sketch, photorealistic or a mixed style. The daily artwork generated is influenced by what was recorded during last one day, one week, one month and from the day Don was switched on in the park. Similar to our short, mid, long-term memories.</p>\n<p>With learning capabilities, Don can improve its skill through our feedback. After seeing Don's artwork, you decided to push the buttons to rate what feelings are invoked in you. After giving 10 emotions, you caught a sign below a camera reading,&nbsp; \"Love your feedback! Please note your ratings might be normalised if our camera detects significant inconsistencies between what you have rated and your facial expressions. This is to minimise trolling and incorrect data inputs for Don to learn.\"</p>\n<p>Don's first few weeks of artworks are a messy blend of activities happening in the day and night. Gradually over time, some artworks are beautifully blended as an expression of life in the park. When mugging happened the night before, Don thinks it is significant and traumatic enough, using darker shades and violent figures in its artwork. Some days you see a detailed and fine artwork, some days with a queer twist which you felt might indicate a lot of unexpected activities have happened over a period.</p>\n<p>People start calling it fake, spooky, nonsense, scam, artistic, talented, sick, awesome, on and on. Don doesn't care a bit! Only when it has recorded your reactions and words, the next artwork might to some extent be inspired by you.</p>\n<p>How will you think of Don the artist?&nbsp;</p>\n<p><br></p>\n<h3><strong>Will we appreciate fully machine-generated art?</strong></h3>\n<p><br></p>\n<p>Let's first take a look at how we have adapted to modern art after over a century and now a multi-billion dollars market. If you do a search, there are definitely many mixed feelings (more negative) for modern art.</p>\n<p>I would say art is very personal. A great piece of art might be perfect for many but there will always be someone who feels nothing special about it. When a piece of art is meant for you, it becomes a bridge between your inner world and the senses it invoked.</p>\n<p>Machine art will probably go through the same or even more challenging passage to social acceptance. Maybe we should also wonder how the unknown generation after <a href=\"http://time.com/4904288/igen-jean-m-twenge-review/\">iGen</a> will embrace arts.</p>\n<p>To end this, will be some questions to ponder on. If machine creates its own art without human inputs. Can we feel talent in machine artwork? Can we or acclaimed artists really appreciate an art piece or music created by a machine? Can we call even call it a \"Masterpiece\"?</p>\n</html>",
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2017/11/05 09:48:00
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2017/11/05 09:48:00
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body<html> <p>https://steemitimages.com/DQmbmDnaE6grxVaop1JNMKdCRhNHycjS4vRF4r1V2uzci5E/Screen%20Shot%202017-10-30%20at%2011.00.35%20PM.png</p> <p>Machines learning to create artistic artworks. Humans learning to appreciate and enjoy their creations.</p> <p>There are&nbsp;<a href="https://magenta.tensorflow.org/welcome-to-magenta">Google Magenta</a>, <a href="https://experiments.withgoogle.com/arts-culture">Google Art Experiment</a>, <a href="https://ami.withgoogle.com/">Artist and Machine Intelligence</a>, <a href="https://research.googleblog.com/2015/06/inceptionism-going-deeper-into-neural.html">Deep Dream</a>, <a href="https://www.cambridgeconsultants.com/vincent">Vincent</a>&nbsp;around among others. All are important steps using machine learning to push arts frontier.&nbsp;</p> <p><br></p> <p><strong>Hold on, what do we understand about the word art?</strong></p> <p>After reading from <a href="https://en.oxforddictionaries.com/definition/art">oxford dictionary</a>, <a href="https://philosophynow.org/issues/108/What_is_Art_and_or_What_is_Beauty">philosophy</a>, <a href="https://plato.stanford.edu/entries/art-definition/">academic</a> and finally landing on a&nbsp;<a href="https://www.theatlantic.com/entertainment/archive/2012/06/what-is-art-a-few-famous-definitions-from-antiquity-to-today/258871/">site</a>&nbsp;showing famous people definitions of art.&nbsp;I will conclude there is no one definition for art and shall relate to how <a href="https://www.thoughtco.com/what-is-the-definition-of-art-182707">Lisa Marder</a>&nbsp;explains:</p> <blockquote>"... there is general consensus that&nbsp;art is the conscious creation of something beautiful or meaningful using skill and imagination". <em>- Ways of Defining Arts, Lisa Marder</em></blockquote> <p><br></p> <p><strong>In the first place, why do we even&nbsp;love and appreciate art?</strong></p> <p>Now feel ourselves in the artists' world! Every art is incomplete, leaving a magical missing piece for us to relate. Completed only when we look, listen, feel or interact with it. Stirring the emotional power in us. Eliciting feelings of lightness,&nbsp;heaviness, numbness, spaciousness, sadness, dense, fear, shock, anger, hope, awe, to having profound realisation, inspirations and uncontrollable reactions.</p> <p>As for me, I am someone who can only appreciate and relate to arts where I can connect with. Drawing upon my intrinsic interpretation of skills and beauty.</p> <p>Now, my logic hat is put on.</p> <p>From a science point, we are social beings and naturally draw connections from things around us. Do you know the&nbsp;<a href="https://www.scientificamerican.com/article/the-mirror-neuron-revolut/">mirror neurons in our brain help us understand actions, intentions and emotions of other people by imitating them</a>? When we receive an external stimulus like a painting, an inner simulation is created by the mirror neurons. Without having to physically experience it, we can relate to what emotions the painting is trying to invoke and even what the artist was experiencing.</p> <p>Art philosopher Denis Dutton spoke of artistic beauty not being entirely cultural in his&nbsp;<a href="https://www.ted.com/talks/denis_dutton_a_darwinian_theory_of_beauty/discussion#t-907396">TED talk</a>:</p> <blockquote><em><strong>One fundamental traits of the ancestor personalities persists in our aesthetic cravings: the beauty we find in skilled performances... We find beauty in something done well.- Ted Talk: A Dwarwinian Theory of Beauty, Dennis Dutton</strong></em></blockquote> <p>It is in our genes, we are drawn to things skillfully done!</p> <p><br></p> <p><strong>Technology art is a new era.</strong></p> <p>For many decades, technology played a big role in facilitating creative arts. Interestingly, we are now beginning to see machines attempting to replace creative work which was long thought to be unique human talent.</p> <p>A short detour to quickly understand art from <a href="https://www.youtube.com/watch?v=bkWHrWw5yTg&amp;t=1s">known history</a>&nbsp;and&nbsp;<a href="http://www.bu.edu/thenerve/archives/fall-2009/art-and-evolution/">science</a>.</p> <p>Sprinting through the long history. Since the Bronze Age (~3,200BC), arts&nbsp;were used for honouring ancestors or beliefs in something greater than themselves. Age of Idealism (~900BC) was when arts begin to show individualism. From Middle Ages (~500AD) onwards, some common trends in the world were to use art for promoting religions, statuses and influencing masses to an ideology.</p> <p>A large part of how art progress seems to closely follow the spirit of the era. Finally, art since the 18th century had slowly evolved to discovering and expressing our own style and experiences today<strong>.</strong></p> <p>Outright lazy with a paraphrase from a good (long)&nbsp;<a href="http://www.bu.edu/thenerve/archives/fall-2009/art-and-evolution/">neuroscience article</a>&nbsp;explaining art and evolution:&nbsp;<em>Most activities that are important for the survival of a species, such as eating and sex are pleasurable; human brains evolved mechanisms to reward and encourage these behaviours,&nbsp;promoting the passing on of genes. But humans can learn to tap directly into these neural reward systems.&nbsp;Humans can eat foods that have no nutritive value and have sex without reproducing. As cognitive psychologist Steven Pinker puts it, the arts respond to “a biologically pointless challenge: figuring out how to get at the pleasure buttons of the brain and deliver little jolts of enjoyment without the inconvenience of wringing real fitness increments from the harsh world”.</em>&nbsp;</p> <p><br></p> <p><strong>Art on its own means skill and craft.</strong></p> <p>Creative art includes mind and intuition; bringing disparate things together and finding meaning in them with skill and craft.These people are all using creative skills and crafts. Sculptors who crave, musicians who compose, artists who paint, scientists who discover through experimentations, businessmen who create whole new business landscapes, digital artists who produce creative work like film, music, paintings, web design.&nbsp;</p> <p><br></p> <p><strong>So can machine truly be an artistic creator?</strong></p> <p>After all these information. I would say yes! But in the case where humans are only involved in setting up and training the machine to create art. Finally, once a good algorithm has been learnt, the machine can create new artistic&nbsp;artworks without human inputs. In my opinion, this can mean creative art done by a machine.</p> <p>The rest of this post will be on using machine&nbsp;learning methods to create art. Specifically drawing and painting possibilities since I enjoy <a href="https://suslove.com/">drawing</a>&nbsp;too!</p> <p><br></p> <p>A progressive flow on how human-assisted machine become an independent creator:</p> <ol> <li><strong>Categorising style</strong> <em>- just sorting them out</em></li> <li><strong>Transferring style </strong><em>- machine change images into a different style</em></li> <li><strong>Suggesting/Designing style</strong> <em>- human and machine collaboration</em></li> <li><strong>Creating new style</strong> <em>- machine own creation</em></li> </ol> <p><br></p> <p><br></p> <h3>1. Categorising style</h3> <p><br></p> <p>Categorising&nbsp;the style of an artwork using machine learning. Take an example of simply sorting art pieces into painting, drawing, graffiti, and sketching. Or even more complex sorting like what was used to create a painting; oil pastel, watercolour and colour pencils, and an artists' style, nuances and subtle characteristics.</p> <p>Classification method will be used for this form of sorting. Usually, deep learning (neural) network will be used for better accuracy.</p> <p>Categorising into various artists' style may get very debatable as most people will likely refer to well-known artists. When it comes to art, you never really know what a unique style is until the artist's arts are recognised. To complicate further, being recognised can refer to the whole world, within a country, within&nbsp;a community or even within an aspiring group.</p> <p>Another type of categorising artworks is to use unsupervised learning to cluster them into similar styles. An efficient way to find out different types of styles available when you have too many artworks data. Sometimes with <a href="https://artsexperiments.withgoogle.com/tags/">surprising results</a> how the art pieces are similar in ways you never thought of before.</p> <p>&nbsp;</p> <p><br></p> <h3><strong>2. Transferring Styles</strong></h3> <p><br></p> <p><strong>Starting with single style transfer.</strong></p> <p>Style transfer is one of the earliest methods using neural network models (or deep learning) to create artistic images. Even though a lot of progress has been made in the last couple of years, it is still a new area with lots of research opportunities.</p> <p>The output image will keep its content but it resembles being created in a different style. The results are really promising from an artistic sense and the potential to recreate pictures in any style. An example below from Google Research Blog:</p> <p>https://3.bp.blogspot.com/-4Uj3hPFupok/VYIT6s_c9OI/AAAAAAAAAlc/_yGdbbsmGiw/s1600/ibis.png</p> <p>Left: Original photo by&nbsp;<a href="https://www.flickr.com/photos/zachievenor/8258092492/in/set-72157630014410078"><em>Zachi Evenor</em></a><em>. Right: processed by Günther Noack, Software Engineer. </em>(Source: <a href="https://research.googleblog.com/2015/06/inceptionism-going-deeper-into-neural.html">Inceptionism: Going Deeper into Neural Networks</a>)</p> <p>And style transfer on a video:</p> <p>https://www.youtube.com/watch?v=Khuj4ASldmU</p> <p><br></p> <p>Now a simple explanation on how deep learning (neural network) creates it.A deep learning network usually has many layers in it. We will start off with what is happening in each layer. When a picture is first being processed by the network, the lower layers will learn patterns such as colours, edges, shapes. As the layers go higher (deeper), it gradually learns more abstract, complex and fine details. The lower layer, when used to enhance an image, creates the effect you see in the photo above or more <a href="https://www.theverge.com/2017/3/30/15124466/ai-photo-style-transfer-deep-neural-nets-adobe">here</a>.</p> <p>What details the layers are extracting are well illustrated here:</p> <p>https://adriancolyer.files.wordpress.com/2017/02/vis-cnns-fig-2.jpeg?w=566&amp;zoom=2 (Source: <a href="https://blog.acolyer.org/2017/02/27/understanding-generalisation-and-transfer-learning-in-deep-neural-networks/">Understanding, generalisation, and transfer learning in deep neural&nbsp;networks</a>)</p> <p>Want to give it a try? Use this <a href="https://deepart.io/">site</a>.</p> <p>As for those who know some basics on neural network. Instead of classifying the data, you are actually transforming the image you have input with the style you desire. By doing a gradient descent (minimisation) on the output image style loss with both the input image and chosen style. More information to <a href="https://medium.com/artists-and-machine-intelligence/neural-artistic-style-transfer-a-comprehensive-look-f54d8649c199">read</a> or&nbsp;<a href="https://www.youtube.com/watch?v=Oex0eWoU7AQ">watch</a>.&nbsp;</p> <p><br></p> <p><strong>To mixing different styles.</strong></p> <p>Most of us probably have a few favourite styles. Here is&nbsp;<a href="https://magenta.tensorflow.org/2016/11/01/multistyle-pastiche-generator">multi-style pastiche generator</a>&nbsp;from Magenta Tensorflow illustrating how a photo can be recreated with different styles:</p> <p>Orginal Photo: After mixing styles:And a real-time multi-style app:https://www.youtube.com/watch?v=Ut5WYGi5yRU</p> <p><br></p> <p>The drawback of this style transfer is its inability to accurately recreate fine details. Sometimes you will want to retain the high resolution on faces and landscapes.There are already different methods (<a href="https://blog.paperspace.com/style-transfer-part-2/">Markov Random Fields (MRFs), Champandard</a>&nbsp;and <a href="https://www.reddit.com/r/MachineLearning/comments/68y8bb/r_deep_image_analogy/">K-Nearest Neighbor</a>) being explored to improve the resemblances of the original image fine details.</p> <p><br></p> <p><br></p> <h3>3. Suggesting / Designing style</h3> <p><br></p> <p>A collaboration between human and machines to create art. With machine assisting human through suggesting and designing styles together.</p> <p>Closest of style suggestion will be a nascent but promising one using assisted drawing. It seems to have the potential for many future possibilities. As for designing style, "Vincent" will be the latest development in this space. With DeepDream by Google having some aspects of co-designing too.</p> <p><br></p> <p><strong>Suggesting Style.</strong></p> <p>Design your drawing on a white space assisted by an AI bot. <a href="https://www.autodraw.com/">AutoDraw</a>&nbsp;by Google does just that, in a form of clipart style doodling.</p> <p>A good thing about this is it allows you to design your drawing with a bot continuously suggesting pictures for your choosing. Sometimes with absurd suggestions which may expand your imaginations. Who knows?</p> <p>https://youtu.be/VwRbvVrUXTc&nbsp;</p> <p><br></p> <p><strong>Designing Style.</strong></p> <p>A few years ago, <a href="https://www.youtube.com/watch?v=Xy1Naexo3Bc">machines are already able to improvise on classical music</a>. Now, Cambridge Consultants had come up with "<a href="https://www.cambridgeconsultants.com/vincent">Vincent</a>" which builds on your sketch input. Creating art on&nbsp;white spaces with you.</p> <p>I would think Vincent is a mix of suggesting and co-designing art with humans. Using what it had learnt from thousands of Renaissance to current day paintings,&nbsp;Vincent will turn your sketch into a complete drawing. With the sketcher guiding and influencing Vincent on its output.</p> <p>Really like "<a href="https://www.cambridgeconsultants.com/vincent">Vincent</a>"! I am calling it a sketcher's transformer:</p> <p>https://vimeo.com/234655275</p> <p>Vincent uses a relatively new neural network architecture call Generative Adversarial Networks (GANs) to improve what the networks are learning. Known for its accurate regeneration of photorealistic pictures. More information <a href="https://www.kdnuggets.com/2017/01/generative-adversarial-networks-hot-topic-machine-learning.html">here</a> and <a href="https://www.analyticsvidhya.com/blog/2017/06/introductory-generative-adversarial-networks-gans/">here</a>.&nbsp;</p> <p><br></p> <p>Next, is creating arts with DeepDream by Google.</p> <p>This method sometimes generates unexpected images. That's where the all the black box magic happens.</p> <p>In the hands of creatives, there are always ways to create cool stuff with them. Give the neural network model a tweak!&nbsp;Go deeper and mess around with the higher network layers.</p> <p>DeepDream is an interesting way to recreate a style likened to memory reconstruct. The output effects it creates have some aspects of co-design between human and machine.</p> <p>We will give the machine an image to design into something only it can relate. A glimpse at what happens using deep learning higher network layers on images (outputs look totally different!):</p> <p>https://steemitimages.com/DQmTbpqyLJ6WVHxsDb8CX73aPQfZBKb47XwMgUMU6fy4fBz/Screen%20Shot%202017-10-18%20at%2011.57.07%20AM.png (Source: <a href="https://photos.google.com/share/AF1QipPX0SCl7OzWilt9LnuQliattX4OUCj_8EP65_cTVnBmS1jnYgsGQAieQUc1VQWdgQ?key=aVBxWjhwSzg2RjJWLWRuVFBBZEN1d205bUdEMnhB">Inceptionism: Going deeper into Neural Networks</a>)</p> <p>And videos using DeepDream (first with the lower layers, second with higher layers):</p> <p>https://www.youtube.com/watch?v=RTHPRrSEdNE</p> <p>https://www.youtube.com/watch?v=gIqKBBxmqho</p> <p>There is a website <a href="https://dreamdeeply.com/">DreamDeeply</a>&nbsp;where you can try out deep dream images!</p> <p>Like me, you may feel deep dream images using lower neural network layers (video - Deep dreaming of Alice) seems similar to results using style transfer method. In actual, DeepDream is using a very different method.</p> <p>Instead of trying to classify a picture like what neural network usually perform, we will have to maximise the similarities the trained network layer found in the input image. Remember the lower and higher layers learn different types of details?</p> <p>If you have some basic understanding on Neural Network backpropagation. This <a href="https://www.youtube.com/watch?v=BsSmBPmPeYQ">video</a> gives a good basic explanation on how it is done, also a <a href="https://youtu.be/MrBzgvUNr4w">video</a>&nbsp;explaining it using Google Tensorflow.</p> <p>DeepDream creations using the higher layers drift away from more predictable creations. How the higher layers interpret a picture can sometimes change the output image completely into something else. The psychedelic effect of the output is a style of its own. Even though it is still limited to what the trained layers have learned, you may get surprising results!&nbsp;</p> <p><br></p> <p>Progress is neverending! An <a href="https://www.newscientist.com/article/2143784-ai-artist-conjures-up-convincing-fake-worlds-from-memories/">interesting work</a> by <a href="http://cqf.io/">Qifeng Chen</a> at Stanford University using memory reconstruct method to create dreamlike fake street. Create a scene by labelling the objects to be found in it. Leave the algorithm to reconstruct how it might look like in photo&nbsp;style.</p> <p>https://youtu.be/t169yNXX4oU</p> <h5><br></h5> <p><br></p> <h3><strong>4. Creating new styles</strong></h3> <p><br></p> <p>Without human assistance, can a machine learn to create a drawing or painting style of its own?</p> <p>My favourite Shimon can not only improvise music now but also create its <a href="https://www.youtube.com/watch?time_continue=4&amp;v=9qrUI-oPQlw">own classical music</a>.</p> <p>Since I unable to find what creating a new drawing and painting styles mean to me. Let me explain my thoughts with a short story.</p> <p>For the last 12 months, Don has been sitting in the middle of a big bustling city park filled with beautiful perennial, seasonal flowers and sparse trees. Every day, Don takes in everything that happened in its 360 degrees line of vision. The colourful fun-filled park during the day and during the quiet late night, couples strolling to occasional mugging and vice activities.</p> <p>Don not only record what he sees but sort them all into information clusters through its algorithm. Its surrounding will be sorted every 30 seconds into weather, colours, people, animals, insects, sound, spatial, ongoing activities, up to 100 thousands different types of clusters. Creating new clusters when necessary. In each cluster, every piece of sorted information will have a very long list of features; covering different emotional states, level of significance in a situation, design principles, general elements of designs, colours and tones representation, and so on. Each feature has a weight given according to its correlations to what the information is about (eg: a kid laughing will have a higher weight on happiness feature).</p> <p>Each morning from 7am-8am, a crowd gathered around. Don's algorithm starts processing all the information it has sorted.Don then starts creating one art piece, reconstructing a random segment of the park. It decides on its own whether to use a computer-generated watercolour, oil pastel, sketch, photorealistic or a mixed style. The daily artwork generated is influenced by what was recorded during last one day, one week, one month and from the day Don was switched on in the park. Similar to our short, mid, long-term memories.</p> <p>With learning capabilities, Don can improve its skill through our feedback. After seeing Don's artwork, you decided to push the buttons to rate what feelings are invoked in you. After giving 10 emotions, you caught a sign below a camera reading,&nbsp; "Love your feedback! Please note your ratings might be normalised if our camera detects significant inconsistencies between what you have rated and your facial expressions. This is to minimise trolling and incorrect data inputs for Don to learn."</p> <p>Don's first few weeks of artworks are a messy blend of activities happening in the day and night. Gradually over time, some artworks are beautifully blended as an expression of life in the park. When mugging happened the night before, Don thinks it is significant and traumatic enough, using darker shades and violent figures in its artwork. Some days you see a detailed and fine artwork, some days with a queer twist which you felt might indicate a lot of unexpected activities have happened over a period.</p> <p>People start calling it fake, spooky, nonsense, scam, artistic, talented, sick, awesome, on and on. Don doesn't care a bit! Only when it has recorded your reactions and words, the next artwork might to some extent be inspired by you.</p> <p>How will you think of Don the artist?&nbsp;</p> <p><br></p> <h3><strong>Will we appreciate fully machine-generated art?</strong></h3> <p><br></p> <p>Let's first take a look at how we have adapted to modern art after over a century and now a multi-billion dollars market. If you do a search, there are definitely many mixed feelings (more negative) for modern art.</p> <p>I would say art is very personal. A great piece of art might be perfect for many but there will always be someone who feels nothing special about it. When a piece of art is meant for you, it becomes a bridge between your inner world and the senses it invoked.</p> <p>Machine art will probably go through the same or even more challenging passage to social acceptance. Maybe we should also wonder how the unknown generation after <a href="http://time.com/4904288/igen-jean-m-twenge-review/">iGen</a> will embrace arts.</p> <p>To end this, will be some questions to ponder on. If machine creates its own art without human inputs. Can we feel talent in machine artwork? Can we or acclaimed artists really appreciate an art piece or music created by a machine? Can we call even call it a "Masterpiece"?</p> </html>
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Transaction InfoBlock #16952484/Trx ef5ed93c74d5dc984f553b4ae842ab4911b2dede
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  "trx_id": "ef5ed93c74d5dc984f553b4ae842ab4911b2dede",
  "block": 16952484,
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  "timestamp": "2017-11-05T09:48:00",
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    "comment",
    {
      "parent_author": "",
      "parent_permlink": "art",
      "author": "susdabble",
      "permlink": "ju4sg-machine-learning-artistic",
      "title": "Machine Learning Artistic",
      "body": "<html>\n<p>https://steemitimages.com/DQmbmDnaE6grxVaop1JNMKdCRhNHycjS4vRF4r1V2uzci5E/Screen%20Shot%202017-10-30%20at%2011.00.35%20PM.png</p>\n<p>Machines learning to create artistic artworks. Humans learning to appreciate and enjoy their creations.</p>\n<p>There are&nbsp;<a href=\"https://magenta.tensorflow.org/welcome-to-magenta\">Google Magenta</a>, <a href=\"https://experiments.withgoogle.com/arts-culture\">Google Art Experiment</a>, <a href=\"https://ami.withgoogle.com/\">Artist and Machine Intelligence</a>, <a href=\"https://research.googleblog.com/2015/06/inceptionism-going-deeper-into-neural.html\">Deep Dream</a>, <a href=\"https://www.cambridgeconsultants.com/vincent\">Vincent</a>&nbsp;around among others. All are important steps using machine learning to push arts frontier.&nbsp;</p>\n<p><br></p>\n<p><strong>Hold on, what do we understand about the word art?</strong></p>\n<p>After reading from <a href=\"https://en.oxforddictionaries.com/definition/art\">oxford dictionary</a>, <a href=\"https://philosophynow.org/issues/108/What_is_Art_and_or_What_is_Beauty\">philosophy</a>, <a href=\"https://plato.stanford.edu/entries/art-definition/\">academic</a> and finally landing on a&nbsp;<a href=\"https://www.theatlantic.com/entertainment/archive/2012/06/what-is-art-a-few-famous-definitions-from-antiquity-to-today/258871/\">site</a>&nbsp;showing famous people definitions of art.&nbsp;I will conclude there is no one definition for art and shall relate to how <a href=\"https://www.thoughtco.com/what-is-the-definition-of-art-182707\">Lisa Marder</a>&nbsp;explains:</p>\n<blockquote>\"... there is general consensus that&nbsp;art is the conscious creation of something beautiful or meaningful using skill and imagination\". <em>- Ways of Defining Arts, Lisa Marder</em></blockquote>\n<p><br></p>\n<p><strong>In the first place, why do we even&nbsp;love and appreciate art?</strong></p>\n<p>Now feel ourselves in the artists' world! Every art is incomplete, leaving a magical missing piece for us to relate. Completed only when we look, listen, feel or interact with it. Stirring the emotional power in us. Eliciting feelings of lightness,&nbsp;heaviness, numbness, spaciousness, sadness, dense, fear, shock, anger, hope, awe, to having profound realisation, inspirations and uncontrollable reactions.</p>\n<p>As for me, I am someone who can only appreciate and relate to arts where I can connect with. Drawing upon my intrinsic interpretation of skills and beauty.</p>\n<p>Now, my logic hat is put on.</p>\n<p>From a science point, we are social beings and naturally draw connections from things around us. Do you know the&nbsp;<a href=\"https://www.scientificamerican.com/article/the-mirror-neuron-revolut/\">mirror neurons in our brain help us understand actions, intentions and emotions of other people by imitating them</a>? When we receive an external stimulus like a painting, an inner simulation is created by the mirror neurons. Without having to physically experience it, we can relate to what emotions the painting is trying to invoke and even what the artist was experiencing.</p>\n<p>Art philosopher Denis Dutton spoke of artistic beauty not being entirely cultural in his&nbsp;<a href=\"https://www.ted.com/talks/denis_dutton_a_darwinian_theory_of_beauty/discussion#t-907396\">TED talk</a>:</p>\n<blockquote><em><strong>One fundamental traits of the ancestor personalities persists in our aesthetic cravings: the beauty we find in skilled performances... We find beauty in something done well.- Ted Talk: A Dwarwinian Theory of Beauty, Dennis Dutton</strong></em></blockquote>\n<p>It is in our genes, we are drawn to things skillfully done!</p>\n<p><br></p>\n<p><strong>Technology art is a new era.</strong></p>\n<p>For many decades, technology played a big role in facilitating creative arts. Interestingly, we are now beginning to see machines attempting to replace creative work which was long thought to be unique human talent.</p>\n<p>A short detour to quickly understand art from <a href=\"https://www.youtube.com/watch?v=bkWHrWw5yTg&amp;t=1s\">known history</a>&nbsp;and&nbsp;<a href=\"http://www.bu.edu/thenerve/archives/fall-2009/art-and-evolution/\">science</a>.</p>\n<p>Sprinting through the long history. Since the Bronze Age (~3,200BC), arts&nbsp;were used for honouring ancestors or beliefs in something greater than themselves. Age of Idealism (~900BC) was when arts begin to show individualism. From Middle Ages (~500AD) onwards, some common trends in the world were to use art for promoting religions, statuses and influencing masses to an ideology.</p>\n<p>A large part of how art progress seems to closely follow the spirit of the era. Finally, art since the 18th century had slowly evolved to discovering and expressing our own style and experiences today<strong>.</strong></p>\n<p>Outright lazy with a paraphrase from a good (long)&nbsp;<a href=\"http://www.bu.edu/thenerve/archives/fall-2009/art-and-evolution/\">neuroscience article</a>&nbsp;explaining art and evolution:&nbsp;<em>Most activities that are important for the survival of a species, such as eating and sex are pleasurable; human brains evolved mechanisms to reward and encourage these behaviours,&nbsp;promoting the passing on of genes. But humans can learn to tap directly into these neural reward systems.&nbsp;Humans can eat foods that have no nutritive value and have sex without reproducing. As cognitive psychologist Steven Pinker puts it, the arts respond to “a biologically pointless challenge: figuring out how to get at the pleasure buttons of the brain and deliver little jolts of enjoyment without the inconvenience of wringing real fitness increments from the harsh world”.</em>&nbsp;</p>\n<p><br></p>\n<p><strong>Art on its own means skill and craft.</strong></p>\n<p>Creative art includes mind and intuition; bringing disparate things together and finding meaning in them with skill and craft.These people are all using creative skills and crafts. Sculptors who crave, musicians who compose, artists who paint, scientists who discover through experimentations, businessmen who create whole new business landscapes, digital artists who produce creative work like film, music, paintings, web design.&nbsp;</p>\n<p><br></p>\n<p><strong>So can machine truly be an artistic creator?</strong></p>\n<p>After all these information. I would say yes! But in the case where humans are only involved in setting up and training the machine to create art. Finally, once a good algorithm has been learnt, the machine can create new artistic&nbsp;artworks without human inputs. In my opinion, this can mean creative art done by a machine.</p>\n<p>The rest of this post will be on using machine&nbsp;learning methods to create art. Specifically drawing and painting possibilities since I enjoy <a href=\"https://suslove.com/\">drawing</a>&nbsp;too!</p>\n<p><br></p>\n<p>A progressive flow on how human-assisted machine become an independent creator:</p>\n<ol>\n  <li><strong>Categorising style</strong> <em>- just sorting them out</em></li>\n  <li><strong>Transferring style </strong><em>- machine change images into a different style</em></li>\n  <li><strong>Suggesting/Designing style</strong> <em>- human and machine collaboration</em></li>\n  <li><strong>Creating new style</strong> <em>- machine own creation</em></li>\n</ol>\n<p><br></p>\n<p><br></p>\n<h3>1. Categorising style</h3>\n<p><br></p>\n<p>Categorising&nbsp;the style of an artwork using machine learning. Take an example of simply sorting art pieces into painting, drawing, graffiti, and sketching. Or even more complex sorting like what was used to create a painting; oil pastel, watercolour and colour pencils, and an artists' style, nuances and subtle characteristics.</p>\n<p>Classification method will be used for this form of sorting. Usually, deep learning (neural) network will be used for better accuracy.</p>\n<p>Categorising into various artists' style may get very debatable as most people will likely refer to well-known artists. When it comes to art, you never really know what a unique style is until the artist's arts are recognised. To complicate further, being recognised can refer to the whole world, within a country, within&nbsp;a community or even within an aspiring group.</p>\n<p>Another type of categorising artworks is to use unsupervised learning to cluster them into similar styles. An efficient way to find out different types of styles available when you have too many artworks data. Sometimes with <a href=\"https://artsexperiments.withgoogle.com/tags/\">surprising results</a> how the art pieces are similar in ways you never thought of before.</p>\n<p>&nbsp;</p>\n<p><br></p>\n<h3><strong>2. Transferring Styles</strong></h3>\n<p><br></p>\n<p><strong>Starting with single style transfer.</strong></p>\n<p>Style transfer is one of the earliest methods using neural network models (or deep learning) to create artistic images. Even though a lot of progress has been made in the last couple of years, it is still a new area with lots of research opportunities.</p>\n<p>The output image will keep its content but it resembles being created in a different style. The results are really promising from an artistic sense and the potential to recreate pictures in any style. An example below from Google Research Blog:</p>\n<p>https://3.bp.blogspot.com/-4Uj3hPFupok/VYIT6s_c9OI/AAAAAAAAAlc/_yGdbbsmGiw/s1600/ibis.png</p>\n<p>Left: Original photo by&nbsp;<a href=\"https://www.flickr.com/photos/zachievenor/8258092492/in/set-72157630014410078\"><em>Zachi Evenor</em></a><em>. Right: processed by Günther Noack, Software Engineer. </em>(Source: <a href=\"https://research.googleblog.com/2015/06/inceptionism-going-deeper-into-neural.html\">Inceptionism: Going Deeper into Neural Networks</a>)</p>\n<p>And style transfer on a video:</p>\n<p>https://www.youtube.com/watch?v=Khuj4ASldmU</p>\n<p><br></p>\n<p>Now a simple explanation on how deep learning (neural network) creates it.A deep learning network usually has many layers in it. We will start off with what is happening in each layer. When a picture is first being processed by the network, the lower layers will learn patterns such as colours, edges, shapes. As the layers go higher (deeper), it gradually learns more abstract, complex and fine details. The lower layer, when used to enhance an image, creates the effect you see in the photo above or more <a href=\"https://www.theverge.com/2017/3/30/15124466/ai-photo-style-transfer-deep-neural-nets-adobe\">here</a>.</p>\n<p>What details the layers are extracting are well illustrated here:</p>\n<p>https://adriancolyer.files.wordpress.com/2017/02/vis-cnns-fig-2.jpeg?w=566&amp;zoom=2 (Source: <a href=\"https://blog.acolyer.org/2017/02/27/understanding-generalisation-and-transfer-learning-in-deep-neural-networks/\">Understanding, generalisation, and transfer learning in deep neural&nbsp;networks</a>)</p>\n<p>Want to give it a try? Use this <a href=\"https://deepart.io/\">site</a>.</p>\n<p>As for those who know some basics on neural network. Instead of classifying the data, you are actually transforming the image you have input with the style you desire. By doing a gradient descent (minimisation) on the output image style loss with both the input image and chosen style. More information to <a href=\"https://medium.com/artists-and-machine-intelligence/neural-artistic-style-transfer-a-comprehensive-look-f54d8649c199\">read</a> or&nbsp;<a href=\"https://www.youtube.com/watch?v=Oex0eWoU7AQ\">watch</a>.&nbsp;</p>\n<p><br></p>\n<p><strong>To mixing different styles.</strong></p>\n<p>Most of us probably have a few favourite styles. Here is&nbsp;<a href=\"https://magenta.tensorflow.org/2016/11/01/multistyle-pastiche-generator\">multi-style pastiche generator</a>&nbsp;from Magenta Tensorflow illustrating how a photo can be recreated with different styles:</p>\n<p>Orginal Photo: After mixing styles:And a real-time multi-style app:https://www.youtube.com/watch?v=Ut5WYGi5yRU</p>\n<p><br></p>\n<p>The drawback of this style transfer is its inability to accurately recreate fine details. Sometimes you will want to retain the high resolution on faces and landscapes.There are already different methods (<a href=\"https://blog.paperspace.com/style-transfer-part-2/\">Markov Random Fields (MRFs), Champandard</a>&nbsp;and <a href=\"https://www.reddit.com/r/MachineLearning/comments/68y8bb/r_deep_image_analogy/\">K-Nearest Neighbor</a>) being explored to improve the resemblances of the original image fine details.</p>\n<p><br></p>\n<p><br></p>\n<h3>3. Suggesting / Designing style</h3>\n<p><br></p>\n<p>A collaboration between human and machines to create art. With machine assisting human through suggesting and designing styles together.</p>\n<p>Closest of style suggestion will be a nascent but promising one using assisted drawing. It seems to have the potential for many future possibilities. As for designing style, \"Vincent\" will be the latest development in this space. With DeepDream by Google having some aspects of co-designing too.</p>\n<p><br></p>\n<p><strong>Suggesting Style.</strong></p>\n<p>Design your drawing on a white space assisted by an AI bot. <a href=\"https://www.autodraw.com/\">AutoDraw</a>&nbsp;by Google does just that, in a form of clipart style doodling.</p>\n<p>A good thing about this is it allows you to design your drawing with a bot continuously suggesting pictures for your choosing. Sometimes with absurd suggestions which may expand your imaginations. Who knows?</p>\n<p>https://youtu.be/VwRbvVrUXTc&nbsp;</p>\n<p><br></p>\n<p><strong>Designing Style.</strong></p>\n<p>A few years ago, <a href=\"https://www.youtube.com/watch?v=Xy1Naexo3Bc\">machines are already able to improvise on classical music</a>. Now, Cambridge Consultants had come up with \"<a href=\"https://www.cambridgeconsultants.com/vincent\">Vincent</a>\" which builds on your sketch input. Creating art on&nbsp;white spaces with you.</p>\n<p>I would think Vincent is a mix of suggesting and co-designing art with humans. Using what it had learnt from thousands of Renaissance to current day paintings,&nbsp;Vincent will turn your sketch into a complete drawing. With the sketcher guiding and influencing Vincent on its output.</p>\n<p>Really like \"<a href=\"https://www.cambridgeconsultants.com/vincent\">Vincent</a>\"! I am calling it a sketcher's transformer:</p>\n<p>https://vimeo.com/234655275</p>\n<p>Vincent uses a relatively new neural network architecture call Generative Adversarial Networks (GANs) to improve what the networks are learning. Known for its accurate regeneration of photorealistic pictures. More information <a href=\"https://www.kdnuggets.com/2017/01/generative-adversarial-networks-hot-topic-machine-learning.html\">here</a> and <a href=\"https://www.analyticsvidhya.com/blog/2017/06/introductory-generative-adversarial-networks-gans/\">here</a>.&nbsp;</p>\n<p><br></p>\n<p>Next, is creating arts with DeepDream by Google.</p>\n<p>This method sometimes generates unexpected images. That's where the all the black box magic happens.</p>\n<p>In the hands of creatives, there are always ways to create cool stuff with them. Give the neural network model a tweak!&nbsp;Go deeper and mess around with the higher network layers.</p>\n<p>DeepDream is an interesting way to recreate a style likened to memory reconstruct. The output effects it creates have some aspects of co-design between human and machine.</p>\n<p>We will give the machine an image to design into something only it can relate. A glimpse at what happens using deep learning higher network layers on images (outputs look totally different!):</p>\n<p>https://steemitimages.com/DQmTbpqyLJ6WVHxsDb8CX73aPQfZBKb47XwMgUMU6fy4fBz/Screen%20Shot%202017-10-18%20at%2011.57.07%20AM.png (Source: <a href=\"https://photos.google.com/share/AF1QipPX0SCl7OzWilt9LnuQliattX4OUCj_8EP65_cTVnBmS1jnYgsGQAieQUc1VQWdgQ?key=aVBxWjhwSzg2RjJWLWRuVFBBZEN1d205bUdEMnhB\">Inceptionism: Going deeper into Neural Networks</a>)</p>\n<p>And videos using DeepDream (first with the lower layers, second with higher layers):</p>\n<p>https://www.youtube.com/watch?v=RTHPRrSEdNE</p>\n<p>https://www.youtube.com/watch?v=gIqKBBxmqho</p>\n<p>There is a website <a href=\"https://dreamdeeply.com/\">DreamDeeply</a>&nbsp;where you can try out deep dream images!</p>\n<p>Like me, you may feel deep dream images using lower neural network layers (video - Deep dreaming of Alice) seems similar to results using style transfer method. In actual, DeepDream is using a very different method.</p>\n<p>Instead of trying to classify a picture like what neural network usually perform, we will have to maximise the similarities the trained network layer found in the input image. Remember the lower and higher layers learn different types of details?</p>\n<p>If you have some basic understanding on Neural Network backpropagation. This <a href=\"https://www.youtube.com/watch?v=BsSmBPmPeYQ\">video</a> gives a good basic explanation on how it is done, also a <a href=\"https://youtu.be/MrBzgvUNr4w\">video</a>&nbsp;explaining it using Google Tensorflow.</p>\n<p>DeepDream creations using the higher layers drift away from more predictable creations. How the higher layers interpret a picture can sometimes change the output image completely into something else. The psychedelic effect of the output is a style of its own. Even though it is still limited to what the trained layers have learned, you may get surprising results!&nbsp;</p>\n<p><br></p>\n<p>Progress is neverending! An <a href=\"https://www.newscientist.com/article/2143784-ai-artist-conjures-up-convincing-fake-worlds-from-memories/\">interesting work</a> by <a href=\"http://cqf.io/\">Qifeng Chen</a> at Stanford University using memory reconstruct method to create dreamlike fake street. Create a scene by labelling the objects to be found in it. Leave the algorithm to reconstruct how it might look like in photo&nbsp;style.</p>\n<p>https://youtu.be/t169yNXX4oU</p>\n<h5><br></h5>\n<p><br></p>\n<h3><strong>4. Creating new styles</strong></h3>\n<p><br></p>\n<p>Without human assistance, can a machine learn to create a drawing or painting style of its own?</p>\n<p>My favourite Shimon can not only improvise music now but also create its <a href=\"https://www.youtube.com/watch?time_continue=4&amp;v=9qrUI-oPQlw\">own classical music</a>.</p>\n<p>Since I unable to find what creating a new drawing and painting styles mean to me. Let me explain my thoughts with a short story.</p>\n<p>For the last 12 months, Don has been sitting in the middle of a big bustling city park filled with beautiful perennial, seasonal flowers and sparse trees. Every day, Don takes in everything that happened in its 360 degrees line of vision. The colourful fun-filled park during the day and during the quiet late night, couples strolling to occasional mugging and vice activities.</p>\n<p>Don not only record what he sees but sort them all into information clusters through its algorithm. Its surrounding will be sorted every 30 seconds into weather, colours, people, animals, insects, sound, spatial, ongoing activities, up to 100 thousands different types of clusters. Creating new clusters when necessary. In each cluster, every piece of sorted information will have a very long list of features; covering different emotional states, level of significance in a situation, design principles, general elements of designs, colours and tones representation, and so on. Each feature has a weight given according to its correlations to what the information is about (eg: a kid laughing will have a higher weight on happiness feature).</p>\n<p>Each morning from 7am-8am, a crowd gathered around. Don's algorithm starts processing all the information it has sorted.Don then starts creating one art piece, reconstructing a random segment of the park. It decides on its own whether to use a computer-generated watercolour, oil pastel, sketch, photorealistic or a mixed style. The daily artwork generated is influenced by what was recorded during last one day, one week, one month and from the day Don was switched on in the park. Similar to our short, mid, long-term memories.</p>\n<p>With learning capabilities, Don can improve its skill through our feedback. After seeing Don's artwork, you decided to push the buttons to rate what feelings are invoked in you. After giving 10 emotions, you caught a sign below a camera reading,&nbsp; \"Love your feedback! Please note your ratings might be normalised if our camera detects significant inconsistencies between what you have rated and your facial expressions. This is to minimise trolling and incorrect data inputs for Don to learn.\"</p>\n<p>Don's first few weeks of artworks are a messy blend of activities happening in the day and night. Gradually over time, some artworks are beautifully blended as an expression of life in the park. When mugging happened the night before, Don thinks it is significant and traumatic enough, using darker shades and violent figures in its artwork. Some days you see a detailed and fine artwork, some days with a queer twist which you felt might indicate a lot of unexpected activities have happened over a period.</p>\n<p>People start calling it fake, spooky, nonsense, scam, artistic, talented, sick, awesome, on and on. Don doesn't care a bit! Only when it has recorded your reactions and words, the next artwork might to some extent be inspired by you.</p>\n<p>How will you think of Don the artist?&nbsp;</p>\n<p><br></p>\n<h3><strong>Will we appreciate fully machine-generated art?</strong></h3>\n<p><br></p>\n<p>Let's first take a look at how we have adapted to modern art after over a century and now a multi-billion dollars market. If you do a search, there are definitely many mixed feelings (more negative) for modern art.</p>\n<p>I would say art is very personal. A great piece of art might be perfect for many but there will always be someone who feels nothing special about it. When a piece of art is meant for you, it becomes a bridge between your inner world and the senses it invoked.</p>\n<p>Machine art will probably go through the same or even more challenging passage to social acceptance. Maybe we should also wonder how the unknown generation after <a href=\"http://time.com/4904288/igen-jean-m-twenge-review/\">iGen</a> will embrace arts.</p>\n<p>To end this, will be some questions to ponder on. If machine creates its own art without human inputs. Can we feel talent in machine artwork? Can we or acclaimed artists really appreciate an art piece or music created by a machine? Can we call even call it a \"Masterpiece\"?</p>\n</html>",
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2017/11/05 09:42:00
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2017/11/05 09:38:42
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body<html> <p>Machines learning to create artistic artworks. Humans learning to appreciate and enjoy their creations.</p> <p>There are&nbsp;<a href="https://magenta.tensorflow.org/welcome-to-magenta">Google Magenta</a>, <a href="https://experiments.withgoogle.com/arts-culture">Google Art Experiment</a>, <a href="https://ami.withgoogle.com/">Artist and Machine Intelligence</a>, <a href="https://research.googleblog.com/2015/06/inceptionism-going-deeper-into-neural.html">Deep Dream</a>, <a href="https://www.cambridgeconsultants.com/vincent">Vincent</a>&nbsp;around among others. All are important steps using machine learning to push arts frontier.&nbsp;</p> <p><br></p> <p><strong>Hold on, what do we understand about the word art?</strong></p> <p>After reading from <a href="https://en.oxforddictionaries.com/definition/art">oxford dictionary</a>, <a href="https://philosophynow.org/issues/108/What_is_Art_and_or_What_is_Beauty">philosophy</a>, <a href="https://plato.stanford.edu/entries/art-definition/">academic</a> and finally landing on a&nbsp;<a href="https://www.theatlantic.com/entertainment/archive/2012/06/what-is-art-a-few-famous-definitions-from-antiquity-to-today/258871/">site</a>&nbsp;showing famous people definitions of art.&nbsp;I will conclude there is no one definition for art and shall relate to how <a href="https://www.thoughtco.com/what-is-the-definition-of-art-182707">Lisa Marder</a>&nbsp;explains:</p> <blockquote>"... there is general consensus that&nbsp;art is the conscious creation of something beautiful or meaningful using skill and imagination". <em>- Ways of Defining Arts, Lisa Marder</em></blockquote> <p><br></p> <p><strong>In the first place, why do we even&nbsp;love and appreciate art?</strong></p> <p>Now feel ourselves in the artists' world! Every art is incomplete, leaving a magical missing piece for us to relate. Completed only when we look, listen, feel or interact with it. Stirring the emotional power in us. Eliciting feelings of lightness,&nbsp;heaviness, numbness, spaciousness, sadness, dense, fear, shock, anger, hope, awe, to having profound realisation, inspirations and uncontrollable reactions.</p> <p>As for me, I am someone who can only appreciate and relate to arts where I can connect with. Drawing upon my intrinsic interpretation of skills and beauty.</p> <p>Now, my logic hat is put on.</p> <p>From a science point, we are social beings and naturally draw connections from things around us. Do you know the&nbsp;<a href="https://www.scientificamerican.com/article/the-mirror-neuron-revolut/">mirror neurons in our brain help us understand actions, intentions and emotions of other people by imitating them</a>? When we receive an external stimulus like a painting, an inner simulation is created by the mirror neurons. Without having to physically experience it, we can relate to what emotions the painting is trying to invoke and even what the artist was experiencing.</p> <p>Art philosopher Denis Dutton spoke of artistic beauty not being entirely cultural in his&nbsp;<a href="https://www.ted.com/talks/denis_dutton_a_darwinian_theory_of_beauty/discussion#t-907396">TED talk</a>:</p> <blockquote><em><strong>One fundamental traits of the ancestor personalities persists in our aesthetic cravings: the beauty we find in skilled performances... We find beauty in something done well.- Ted Talk: A Dwarwinian Theory of Beauty, Dennis Dutton</strong></em></blockquote> <p>It is in our genes, we are drawn to things skillfully done!</p> <p><br></p> <p><strong>Technology art is a new era.</strong></p> <p>For many decades, technology played a big role in facilitating creative arts. Interestingly, we are now beginning to see machines attempting to replace creative work which was long thought to be unique human talent.</p> <p>A short detour to quickly understand art from <a href="https://www.youtube.com/watch?v=bkWHrWw5yTg&amp;t=1s">known history</a>&nbsp;and&nbsp;<a href="http://www.bu.edu/thenerve/archives/fall-2009/art-and-evolution/">science</a>.</p> <p>Sprinting through the long history. Since the Bronze Age (~3,200BC), arts&nbsp;were used for honouring ancestors or beliefs in something greater than themselves. Age of Idealism (~900BC) was when arts begin to show individualism. From Middle Ages (~500AD) onwards, some common trends in the world were to use art for promoting religions, statuses and influencing masses to an ideology.</p> <p>A large part of how art progress seems to closely follow the spirit of the era. Finally, art since the 18th century had slowly evolved to discovering and expressing our own style and experiences today<strong>.</strong></p> <p>Outright lazy with a paraphrase from a good (long)&nbsp;<a href="http://www.bu.edu/thenerve/archives/fall-2009/art-and-evolution/">neuroscience article</a>&nbsp;explaining art and evolution:&nbsp;<em>Most activities that are important for the survival of a species, such as eating and sex are pleasurable; human brains evolved mechanisms to reward and encourage these behaviours,&nbsp;promoting the passing on of genes. But humans can learn to tap directly into these neural reward systems.&nbsp;Humans can eat foods that have no nutritive value and have sex without reproducing. As cognitive psychologist Steven Pinker puts it, the arts respond to “a biologically pointless challenge: figuring out how to get at the pleasure buttons of the brain and deliver little jolts of enjoyment without the inconvenience of wringing real fitness increments from the harsh world”.</em>&nbsp;</p> <p><br></p> <p><strong>Art on its own means skill and craft.</strong></p> <p>Creative art includes mind and intuition; bringing disparate things together and finding meaning in them with skill and craft.These people are all using creative skills and crafts. Sculptors who crave, musicians who compose, artists who paint, scientists who discover through experimentations, businessmen who create whole new business landscapes, digital artists who produce creative work like film, music, paintings, web design.&nbsp;</p> <p><br></p> <p><strong>So can machine truly be an artistic creator?</strong></p> <p>After all these information. I would say yes! But in the case where humans are only involved in setting up and training the machine to create art. Finally, once a good algorithm has been learnt, the machine can create new artistic&nbsp;artworks without human inputs. In my opinion, this can mean creative art done by a machine.</p> <p>The rest of this post will be on using machine&nbsp;learning methods to create art. Specifically drawing and painting possibilities since I enjoy <a href="https://suslove.com/">drawing</a>&nbsp;too!</p> <p><br></p> <p>A progressive flow on how human-assisted machine become an independent creator:</p> <ol> <li><strong>Categorising style</strong> <em>- just sorting them out</em></li> <li><strong>Transferring style </strong><em>- machine change images into a different style</em></li> <li><strong>Suggesting/Designing style</strong> <em>- human and machine collaboration</em></li> <li><strong>Creating new style</strong> <em>- machine own creation</em></li> </ol> <p><br></p> <p><br></p> <h3>1. Categorising style</h3> <p><br></p> <p>Categorising&nbsp;the style of an artwork using machine learning. Take an example of simply sorting art pieces into painting, drawing, graffiti, and sketching. Or even more complex sorting like what was used to create a painting; oil pastel, watercolour and colour pencils, and an artists' style, nuances and subtle characteristics.</p> <p>Classification method will be used for this form of sorting. Usually, deep learning (neural) network will be used for better accuracy.</p> <p>Categorising into various artists' style may get very debatable as most people will likely refer to well-known artists. When it comes to art, you never really know what a unique style is until the artist's arts are recognised. To complicate further, being recognised can refer to the whole world, within a country, within&nbsp;a community or even within an aspiring group.</p> <p>Another type of categorising artworks is to use unsupervised learning to cluster them into similar styles. An efficient way to find out different types of styles available when you have too many artworks data. Sometimes with <a href="https://artsexperiments.withgoogle.com/tags/">surprising results</a> how the art pieces are similar in ways you never thought of before.</p> <p>&nbsp;</p> <p><br></p> <h3><strong>2. Transferring Styles</strong></h3> <p><br></p> <p><strong>Starting with single style transfer.</strong></p> <p>Style transfer is one of the earliest methods using neural network models (or deep learning) to create artistic images. Even though a lot of progress has been made in the last couple of years, it is still a new area with lots of research opportunities.</p> <p>The output image will keep its content but it resembles being created in a different style. The results are really promising from an artistic sense and the potential to recreate pictures in any style. An example below from Google Research Blog:</p> <p>https://3.bp.blogspot.com/-4Uj3hPFupok/VYIT6s_c9OI/AAAAAAAAAlc/_yGdbbsmGiw/s1600/ibis.png</p> <p>Left: Original photo by&nbsp;<a href="https://www.flickr.com/photos/zachievenor/8258092492/in/set-72157630014410078"><em>Zachi Evenor</em></a><em>. Right: processed by Günther Noack, Software Engineer. </em>(Source: <a href="https://research.googleblog.com/2015/06/inceptionism-going-deeper-into-neural.html">Inceptionism: Going Deeper into Neural Networks</a>)</p> <p>And style transfer on a video:</p> <p>https://www.youtube.com/watch?v=Khuj4ASldmU</p> <p><br></p> <p>Now a simple explanation on how deep learning (neural network) creates it.A deep learning network usually has many layers in it. We will start off with what is happening in each layer. When a picture is first being processed by the network, the lower layers will learn patterns such as colours, edges, shapes. As the layers go higher (deeper), it gradually learns more abstract, complex and fine details. The lower layer, when used to enhance an image, creates the effect you see in the photo above or more <a href="https://www.theverge.com/2017/3/30/15124466/ai-photo-style-transfer-deep-neural-nets-adobe">here</a>.</p> <p>What details the layers are extracting are well illustrated here:</p> <p>https://adriancolyer.files.wordpress.com/2017/02/vis-cnns-fig-2.jpeg?w=566&amp;zoom=2 (Source: <a href="https://blog.acolyer.org/2017/02/27/understanding-generalisation-and-transfer-learning-in-deep-neural-networks/">Understanding, generalisation, and transfer learning in deep neural&nbsp;networks</a>)</p> <p>Want to give it a try? Use this <a href="https://deepart.io/">site</a>.</p> <p>As for those who know some basics on neural network. Instead of classifying the data, you are actually transforming the image you have input with the style you desire. By doing a gradient descent (minimisation) on the output image style loss with both the input image and chosen style. More information to <a href="https://medium.com/artists-and-machine-intelligence/neural-artistic-style-transfer-a-comprehensive-look-f54d8649c199">read</a> or&nbsp;<a href="https://www.youtube.com/watch?v=Oex0eWoU7AQ">watch</a>.&nbsp;</p> <p><br></p> <p><strong>To mixing different styles.</strong></p> <p>Most of us probably have a few favourite styles. Here is&nbsp;<a href="https://magenta.tensorflow.org/2016/11/01/multistyle-pastiche-generator">multi-style pastiche generator</a>&nbsp;from Magenta Tensorflow illustrating how a photo can be recreated with different styles:</p> <p>Orginal Photo: After mixing styles:And a real-time multi-style app:https://www.youtube.com/watch?v=Ut5WYGi5yRU</p> <p><br></p> <p>The drawback of this style transfer is its inability to accurately recreate fine details. Sometimes you will want to retain the high resolution on faces and landscapes.There are already different methods (<a href="https://blog.paperspace.com/style-transfer-part-2/">Markov Random Fields (MRFs), Champandard</a>&nbsp;and <a href="https://www.reddit.com/r/MachineLearning/comments/68y8bb/r_deep_image_analogy/">K-Nearest Neighbor</a>) being explored to improve the resemblances of the original image fine details.</p> <p><br></p> <p><br></p> <h3>3. Suggesting / Designing style</h3> <p><br></p> <p>A collaboration between human and machines to create art. With machine assisting human through suggesting and designing styles together.</p> <p>Closest of style suggestion will be a nascent but promising one using assisted drawing. It seems to have the potential for many future possibilities. As for designing style, "Vincent" will be the latest development in this space. With DeepDream by Google having some aspects of co-designing too.</p> <p><br></p> <p><strong>Suggesting Style.</strong></p> <p>Design your drawing on a white space assisted by an AI bot. <a href="https://www.autodraw.com/">AutoDraw</a>&nbsp;by Google does just that, in a form of clipart style doodling.</p> <p>A good thing about this is it allows you to design your drawing with a bot continuously suggesting pictures for your choosing. Sometimes with absurd suggestions which may expand your imaginations. Who knows?</p> <p>https://youtu.be/VwRbvVrUXTc&nbsp;</p> <p><br></p> <p><strong>Designing Style.</strong></p> <p>A few years ago, <a href="https://www.youtube.com/watch?v=Xy1Naexo3Bc">machines are already able to improvise on classical music</a>. Now, Cambridge Consultants had come up with "<a href="https://www.cambridgeconsultants.com/vincent">Vincent</a>" which builds on your sketch input. Creating art on&nbsp;white spaces with you.</p> <p>I would think Vincent is a mix of suggesting and co-designing art with humans. Using what it had learnt from thousands of Renaissance to current day paintings,&nbsp;Vincent will turn your sketch into a complete drawing. With the sketcher guiding and influencing Vincent on its output.</p> <p>Really like "<a href="https://www.cambridgeconsultants.com/vincent">Vincent</a>"! I am calling it a sketcher's transformer:</p> <p>https://vimeo.com/234655275</p> <p>Vincent uses a relatively new neural network architecture call Generative Adversarial Networks (GANs) to improve what the networks are learning. Known for its accurate regeneration of photorealistic pictures. More information <a href="https://www.kdnuggets.com/2017/01/generative-adversarial-networks-hot-topic-machine-learning.html">here</a> and <a href="https://www.analyticsvidhya.com/blog/2017/06/introductory-generative-adversarial-networks-gans/">here</a>.&nbsp;</p> <p><br></p> <p>Next, is creating arts with DeepDream by Google.</p> <p>This method sometimes generates unexpected images. That's where the all the black box magic happens.</p> <p>In the hands of creatives, there are always ways to create cool stuff with them. Give the neural network model a tweak!&nbsp;Go deeper and mess around with the higher network layers.</p> <p>DeepDream is an interesting way to recreate a style likened to memory reconstruct. The output effects it creates have some aspects of co-design between human and machine.</p> <p>We will give the machine an image to design into something only it can relate. A glimpse at what happens using deep learning higher network layers on images (outputs look totally different!):</p> <p>https://steemitimages.com/DQmTbpqyLJ6WVHxsDb8CX73aPQfZBKb47XwMgUMU6fy4fBz/Screen%20Shot%202017-10-18%20at%2011.57.07%20AM.png (Source: <a href="https://photos.google.com/share/AF1QipPX0SCl7OzWilt9LnuQliattX4OUCj_8EP65_cTVnBmS1jnYgsGQAieQUc1VQWdgQ?key=aVBxWjhwSzg2RjJWLWRuVFBBZEN1d205bUdEMnhB">Inceptionism: Going deeper into Neural Networks</a>)</p> <p>And videos using DeepDream (first with the lower layers, second with higher layers):</p> <p>https://www.youtube.com/watch?v=RTHPRrSEdNE</p> <p>https://www.youtube.com/watch?v=gIqKBBxmqho</p> <p>There is a website <a href="https://dreamdeeply.com/">DreamDeeply</a>&nbsp;where you can try out deep dream images!</p> <p>Like me, you may feel deep dream images using lower neural network layers (video - Deep dreaming of Alice) seems similar to results using style transfer method. In actual, DeepDream is using a very different method.</p> <p>Instead of trying to classify a picture like what neural network usually perform, we will have to maximise the similarities the trained network layer found in the input image. Remember the lower and higher layers learn different types of details?</p> <p>If you have some basic understanding on Neural Network backpropagation. This <a href="https://www.youtube.com/watch?v=BsSmBPmPeYQ">video</a> gives a good basic explanation on how it is done, also a <a href="https://youtu.be/MrBzgvUNr4w">video</a>&nbsp;explaining it using Google Tensorflow.</p> <p>DeepDream creations using the higher layers drift away from more predictable creations. How the higher layers interpret a picture can sometimes change the output image completely into something else. The psychedelic effect of the output is a style of its own. Even though it is still limited to what the trained layers have learned, you may get surprising results!&nbsp;</p> <p><br></p> <p>Progress is neverending! An <a href="https://www.newscientist.com/article/2143784-ai-artist-conjures-up-convincing-fake-worlds-from-memories/">interesting work</a> by <a href="http://cqf.io/">Qifeng Chen</a> at Stanford University using memory reconstruct method to create dreamlike fake street. Create a scene by labelling the objects to be found in it. Leave the algorithm to reconstruct how it might look like in photo&nbsp;style.</p> <p>https://youtu.be/t169yNXX4oU</p> <h5><br></h5> <p><br></p> <h3><strong>4. Creating new styles</strong></h3> <p><br></p> <p>Without human assistance, can a machine learn to create a drawing or painting style of its own?</p> <p>My favourite Shimon can not only improvise music now but also create its <a href="https://www.youtube.com/watch?time_continue=4&amp;v=9qrUI-oPQlw">own classical music</a>.</p> <p>Since I unable to find what creating a new drawing and painting styles mean to me. Let me explain my thoughts with a short story.</p> <p>For the last 12 months, Don has been sitting in the middle of a big bustling city park filled with beautiful perennial, seasonal flowers and sparse trees. Every day, Don takes in everything that happened in its 360 degrees line of vision. The colourful fun-filled park during the day and during the quiet late night, couples strolling to occasional mugging and vice activities.</p> <p>Don not only record what he sees but sort them all into information clusters through its algorithm. Its surrounding will be sorted every 30 seconds into weather, colours, people, animals, insects, sound, spatial, ongoing activities, up to 100 thousands different types of clusters. Creating new clusters when necessary. In each cluster, every piece of sorted information will have a very long list of features; covering different emotional states, level of significance in a situation, design principles, general elements of designs, colours and tones representation, and so on. Each feature has a weight given according to its correlations to what the information is about (eg: a kid laughing will have a higher weight on happiness feature).</p> <p>Each morning from 7am-8am, a crowd gathered around. Don's algorithm starts processing all the information it has sorted.Don then starts creating one art piece, reconstructing a random segment of the park. It decides on its own whether to use a computer-generated watercolour, oil pastel, sketch, photorealistic or a mixed style. The daily artwork generated is influenced by what was recorded during last one day, one week, one month and from the day Don was switched on in the park. Similar to our short, mid, long-term memories.</p> <p>With learning capabilities, Don can improve its skill through our feedback. After seeing Don's artwork, you decided to push the buttons to rate what feelings are invoked in you. After giving 10 emotions, you caught a sign below a camera reading,&nbsp; "Love your feedback! Please note your ratings might be normalised if our camera detects significant inconsistencies between what you have rated and your facial expressions. This is to minimise trolling and incorrect data inputs for Don to learn."</p> <p>Don's first few weeks of artworks are a messy blend of activities happening in the day and night. Gradually over time, some artworks are beautifully blended as an expression of life in the park. When mugging happened the night before, Don thinks it is significant and traumatic enough, using darker shades and violent figures in its artwork. Some days you see a detailed and fine artwork, some days with a queer twist which you felt might indicate a lot of unexpected activities have happened over a period.</p> <p>People start calling it fake, spooky, nonsense, scam, artistic, talented, sick, awesome, on and on. Don doesn't care a bit! Only when it has recorded your reactions and words, the next artwork might to some extent be inspired by you.</p> <p>How will you think of Don the artist?&nbsp;</p> <p><br></p> <h3><strong>Will we appreciate fully machine-generated art?</strong></h3> <p><br></p> <p>Let's first take a look at how we have adapted to modern art after over a century and now a multi-billion dollars market. If you do a search, there are definitely many mixed feelings (more negative) for modern art.</p> <p>I would say art is very personal. A great piece of art might be perfect for many but there will always be someone who feels nothing special about it. When a piece of art is meant for you, it becomes a bridge between your inner world and the senses it invoked.</p> <p>Machine art will probably go through the same or even more challenging passage to social acceptance. Maybe we should also wonder how the unknown generation after <a href="http://time.com/4904288/igen-jean-m-twenge-review/">iGen</a> will embrace arts.</p> <p>To end this, will be some questions to ponder on. If machine creates its own art without human inputs. Can we feel talent in machine artwork? Can we or acclaimed artists really appreciate an art piece or music created by a machine? Can we call even call it a "Masterpiece"?</p> </html>
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Transaction InfoBlock #16952298/Trx a5eb8ae212126c1b74aa57fcc745b4fb6ef001cf
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      "parent_permlink": "art",
      "author": "susdabble",
      "permlink": "machine-learning-artistic",
      "title": "Machine Learning Artistic",
      "body": "<html>\n<p>Machines learning to create artistic artworks. Humans learning to appreciate and enjoy their creations.</p>\n<p>There are&nbsp;<a href=\"https://magenta.tensorflow.org/welcome-to-magenta\">Google Magenta</a>, <a href=\"https://experiments.withgoogle.com/arts-culture\">Google Art Experiment</a>, <a href=\"https://ami.withgoogle.com/\">Artist and Machine Intelligence</a>, <a href=\"https://research.googleblog.com/2015/06/inceptionism-going-deeper-into-neural.html\">Deep Dream</a>, <a href=\"https://www.cambridgeconsultants.com/vincent\">Vincent</a>&nbsp;around among others. All are important steps using machine learning to push arts frontier.&nbsp;</p>\n<p><br></p>\n<p><strong>Hold on, what do we understand about the word art?</strong></p>\n<p>After reading from <a href=\"https://en.oxforddictionaries.com/definition/art\">oxford dictionary</a>, <a href=\"https://philosophynow.org/issues/108/What_is_Art_and_or_What_is_Beauty\">philosophy</a>, <a href=\"https://plato.stanford.edu/entries/art-definition/\">academic</a> and finally landing on a&nbsp;<a href=\"https://www.theatlantic.com/entertainment/archive/2012/06/what-is-art-a-few-famous-definitions-from-antiquity-to-today/258871/\">site</a>&nbsp;showing famous people definitions of art.&nbsp;I will conclude there is no one definition for art and shall relate to how <a href=\"https://www.thoughtco.com/what-is-the-definition-of-art-182707\">Lisa Marder</a>&nbsp;explains:</p>\n<blockquote>\"... there is general consensus that&nbsp;art is the conscious creation of something beautiful or meaningful using skill and imagination\". <em>- Ways of Defining Arts, Lisa Marder</em></blockquote>\n<p><br></p>\n<p><strong>In the first place, why do we even&nbsp;love and appreciate art?</strong></p>\n<p>Now feel ourselves in the artists' world! Every art is incomplete, leaving a magical missing piece for us to relate. Completed only when we look, listen, feel or interact with it. Stirring the emotional power in us. Eliciting feelings of lightness,&nbsp;heaviness, numbness, spaciousness, sadness, dense, fear, shock, anger, hope, awe, to having profound realisation, inspirations and uncontrollable reactions.</p>\n<p>As for me, I am someone who can only appreciate and relate to arts where I can connect with. Drawing upon my intrinsic interpretation of skills and beauty.</p>\n<p>Now, my logic hat is put on.</p>\n<p>From a science point, we are social beings and naturally draw connections from things around us. Do you know the&nbsp;<a href=\"https://www.scientificamerican.com/article/the-mirror-neuron-revolut/\">mirror neurons in our brain help us understand actions, intentions and emotions of other people by imitating them</a>? When we receive an external stimulus like a painting, an inner simulation is created by the mirror neurons. Without having to physically experience it, we can relate to what emotions the painting is trying to invoke and even what the artist was experiencing.</p>\n<p>Art philosopher Denis Dutton spoke of artistic beauty not being entirely cultural in his&nbsp;<a href=\"https://www.ted.com/talks/denis_dutton_a_darwinian_theory_of_beauty/discussion#t-907396\">TED talk</a>:</p>\n<blockquote><em><strong>One fundamental traits of the ancestor personalities persists in our aesthetic cravings: the beauty we find in skilled performances... We find beauty in something done well.- Ted Talk: A Dwarwinian Theory of Beauty, Dennis Dutton</strong></em></blockquote>\n<p>It is in our genes, we are drawn to things skillfully done!</p>\n<p><br></p>\n<p><strong>Technology art is a new era.</strong></p>\n<p>For many decades, technology played a big role in facilitating creative arts. Interestingly, we are now beginning to see machines attempting to replace creative work which was long thought to be unique human talent.</p>\n<p>A short detour to quickly understand art from <a href=\"https://www.youtube.com/watch?v=bkWHrWw5yTg&amp;t=1s\">known history</a>&nbsp;and&nbsp;<a href=\"http://www.bu.edu/thenerve/archives/fall-2009/art-and-evolution/\">science</a>.</p>\n<p>Sprinting through the long history. Since the Bronze Age (~3,200BC), arts&nbsp;were used for honouring ancestors or beliefs in something greater than themselves. Age of Idealism (~900BC) was when arts begin to show individualism. From Middle Ages (~500AD) onwards, some common trends in the world were to use art for promoting religions, statuses and influencing masses to an ideology.</p>\n<p>A large part of how art progress seems to closely follow the spirit of the era. Finally, art since the 18th century had slowly evolved to discovering and expressing our own style and experiences today<strong>.</strong></p>\n<p>Outright lazy with a paraphrase from a good (long)&nbsp;<a href=\"http://www.bu.edu/thenerve/archives/fall-2009/art-and-evolution/\">neuroscience article</a>&nbsp;explaining art and evolution:&nbsp;<em>Most activities that are important for the survival of a species, such as eating and sex are pleasurable; human brains evolved mechanisms to reward and encourage these behaviours,&nbsp;promoting the passing on of genes. But humans can learn to tap directly into these neural reward systems.&nbsp;Humans can eat foods that have no nutritive value and have sex without reproducing. As cognitive psychologist Steven Pinker puts it, the arts respond to “a biologically pointless challenge: figuring out how to get at the pleasure buttons of the brain and deliver little jolts of enjoyment without the inconvenience of wringing real fitness increments from the harsh world”.</em>&nbsp;</p>\n<p><br></p>\n<p><strong>Art on its own means skill and craft.</strong></p>\n<p>Creative art includes mind and intuition; bringing disparate things together and finding meaning in them with skill and craft.These people are all using creative skills and crafts. Sculptors who crave, musicians who compose, artists who paint, scientists who discover through experimentations, businessmen who create whole new business landscapes, digital artists who produce creative work like film, music, paintings, web design.&nbsp;</p>\n<p><br></p>\n<p><strong>So can machine truly be an artistic creator?</strong></p>\n<p>After all these information. I would say yes! But in the case where humans are only involved in setting up and training the machine to create art. Finally, once a good algorithm has been learnt, the machine can create new artistic&nbsp;artworks without human inputs. In my opinion, this can mean creative art done by a machine.</p>\n<p>The rest of this post will be on using machine&nbsp;learning methods to create art. Specifically drawing and painting possibilities since I enjoy <a href=\"https://suslove.com/\">drawing</a>&nbsp;too!</p>\n<p><br></p>\n<p>A progressive flow on how human-assisted machine become an independent creator:</p>\n<ol>\n  <li><strong>Categorising style</strong> <em>- just sorting them out</em></li>\n  <li><strong>Transferring style </strong><em>- machine change images into a different style</em></li>\n  <li><strong>Suggesting/Designing style</strong> <em>- human and machine collaboration</em></li>\n  <li><strong>Creating new style</strong> <em>- machine own creation</em></li>\n</ol>\n<p><br></p>\n<p><br></p>\n<h3>1. Categorising style</h3>\n<p><br></p>\n<p>Categorising&nbsp;the style of an artwork using machine learning. Take an example of simply sorting art pieces into painting, drawing, graffiti, and sketching. Or even more complex sorting like what was used to create a painting; oil pastel, watercolour and colour pencils, and an artists' style, nuances and subtle characteristics.</p>\n<p>Classification method will be used for this form of sorting. Usually, deep learning (neural) network will be used for better accuracy.</p>\n<p>Categorising into various artists' style may get very debatable as most people will likely refer to well-known artists. When it comes to art, you never really know what a unique style is until the artist's arts are recognised. To complicate further, being recognised can refer to the whole world, within a country, within&nbsp;a community or even within an aspiring group.</p>\n<p>Another type of categorising artworks is to use unsupervised learning to cluster them into similar styles. An efficient way to find out different types of styles available when you have too many artworks data. Sometimes with <a href=\"https://artsexperiments.withgoogle.com/tags/\">surprising results</a> how the art pieces are similar in ways you never thought of before.</p>\n<p>&nbsp;</p>\n<p><br></p>\n<h3><strong>2. Transferring Styles</strong></h3>\n<p><br></p>\n<p><strong>Starting with single style transfer.</strong></p>\n<p>Style transfer is one of the earliest methods using neural network models (or deep learning) to create artistic images. Even though a lot of progress has been made in the last couple of years, it is still a new area with lots of research opportunities.</p>\n<p>The output image will keep its content but it resembles being created in a different style. The results are really promising from an artistic sense and the potential to recreate pictures in any style. An example below from Google Research Blog:</p>\n<p>https://3.bp.blogspot.com/-4Uj3hPFupok/VYIT6s_c9OI/AAAAAAAAAlc/_yGdbbsmGiw/s1600/ibis.png</p>\n<p>Left: Original photo by&nbsp;<a href=\"https://www.flickr.com/photos/zachievenor/8258092492/in/set-72157630014410078\"><em>Zachi Evenor</em></a><em>. Right: processed by Günther Noack, Software Engineer. </em>(Source: <a href=\"https://research.googleblog.com/2015/06/inceptionism-going-deeper-into-neural.html\">Inceptionism: Going Deeper into Neural Networks</a>)</p>\n<p>And style transfer on a video:</p>\n<p>https://www.youtube.com/watch?v=Khuj4ASldmU</p>\n<p><br></p>\n<p>Now a simple explanation on how deep learning (neural network) creates it.A deep learning network usually has many layers in it. We will start off with what is happening in each layer. When a picture is first being processed by the network, the lower layers will learn patterns such as colours, edges, shapes. As the layers go higher (deeper), it gradually learns more abstract, complex and fine details. The lower layer, when used to enhance an image, creates the effect you see in the photo above or more <a href=\"https://www.theverge.com/2017/3/30/15124466/ai-photo-style-transfer-deep-neural-nets-adobe\">here</a>.</p>\n<p>What details the layers are extracting are well illustrated here:</p>\n<p>https://adriancolyer.files.wordpress.com/2017/02/vis-cnns-fig-2.jpeg?w=566&amp;zoom=2 (Source: <a href=\"https://blog.acolyer.org/2017/02/27/understanding-generalisation-and-transfer-learning-in-deep-neural-networks/\">Understanding, generalisation, and transfer learning in deep neural&nbsp;networks</a>)</p>\n<p>Want to give it a try? Use this <a href=\"https://deepart.io/\">site</a>.</p>\n<p>As for those who know some basics on neural network. Instead of classifying the data, you are actually transforming the image you have input with the style you desire. By doing a gradient descent (minimisation) on the output image style loss with both the input image and chosen style. More information to <a href=\"https://medium.com/artists-and-machine-intelligence/neural-artistic-style-transfer-a-comprehensive-look-f54d8649c199\">read</a> or&nbsp;<a href=\"https://www.youtube.com/watch?v=Oex0eWoU7AQ\">watch</a>.&nbsp;</p>\n<p><br></p>\n<p><strong>To mixing different styles.</strong></p>\n<p>Most of us probably have a few favourite styles. Here is&nbsp;<a href=\"https://magenta.tensorflow.org/2016/11/01/multistyle-pastiche-generator\">multi-style pastiche generator</a>&nbsp;from Magenta Tensorflow illustrating how a photo can be recreated with different styles:</p>\n<p>Orginal Photo: After mixing styles:And a real-time multi-style app:https://www.youtube.com/watch?v=Ut5WYGi5yRU</p>\n<p><br></p>\n<p>The drawback of this style transfer is its inability to accurately recreate fine details. Sometimes you will want to retain the high resolution on faces and landscapes.There are already different methods (<a href=\"https://blog.paperspace.com/style-transfer-part-2/\">Markov Random Fields (MRFs), Champandard</a>&nbsp;and <a href=\"https://www.reddit.com/r/MachineLearning/comments/68y8bb/r_deep_image_analogy/\">K-Nearest Neighbor</a>) being explored to improve the resemblances of the original image fine details.</p>\n<p><br></p>\n<p><br></p>\n<h3>3. Suggesting / Designing style</h3>\n<p><br></p>\n<p>A collaboration between human and machines to create art. With machine assisting human through suggesting and designing styles together.</p>\n<p>Closest of style suggestion will be a nascent but promising one using assisted drawing. It seems to have the potential for many future possibilities. As for designing style, \"Vincent\" will be the latest development in this space. With DeepDream by Google having some aspects of co-designing too.</p>\n<p><br></p>\n<p><strong>Suggesting Style.</strong></p>\n<p>Design your drawing on a white space assisted by an AI bot. <a href=\"https://www.autodraw.com/\">AutoDraw</a>&nbsp;by Google does just that, in a form of clipart style doodling.</p>\n<p>A good thing about this is it allows you to design your drawing with a bot continuously suggesting pictures for your choosing. Sometimes with absurd suggestions which may expand your imaginations. Who knows?</p>\n<p>https://youtu.be/VwRbvVrUXTc&nbsp;</p>\n<p><br></p>\n<p><strong>Designing Style.</strong></p>\n<p>A few years ago, <a href=\"https://www.youtube.com/watch?v=Xy1Naexo3Bc\">machines are already able to improvise on classical music</a>. Now, Cambridge Consultants had come up with \"<a href=\"https://www.cambridgeconsultants.com/vincent\">Vincent</a>\" which builds on your sketch input. Creating art on&nbsp;white spaces with you.</p>\n<p>I would think Vincent is a mix of suggesting and co-designing art with humans. Using what it had learnt from thousands of Renaissance to current day paintings,&nbsp;Vincent will turn your sketch into a complete drawing. With the sketcher guiding and influencing Vincent on its output.</p>\n<p>Really like \"<a href=\"https://www.cambridgeconsultants.com/vincent\">Vincent</a>\"! I am calling it a sketcher's transformer:</p>\n<p>https://vimeo.com/234655275</p>\n<p>Vincent uses a relatively new neural network architecture call Generative Adversarial Networks (GANs) to improve what the networks are learning. Known for its accurate regeneration of photorealistic pictures. More information <a href=\"https://www.kdnuggets.com/2017/01/generative-adversarial-networks-hot-topic-machine-learning.html\">here</a> and <a href=\"https://www.analyticsvidhya.com/blog/2017/06/introductory-generative-adversarial-networks-gans/\">here</a>.&nbsp;</p>\n<p><br></p>\n<p>Next, is creating arts with DeepDream by Google.</p>\n<p>This method sometimes generates unexpected images. That's where the all the black box magic happens.</p>\n<p>In the hands of creatives, there are always ways to create cool stuff with them. Give the neural network model a tweak!&nbsp;Go deeper and mess around with the higher network layers.</p>\n<p>DeepDream is an interesting way to recreate a style likened to memory reconstruct. The output effects it creates have some aspects of co-design between human and machine.</p>\n<p>We will give the machine an image to design into something only it can relate. A glimpse at what happens using deep learning higher network layers on images (outputs look totally different!):</p>\n<p>https://steemitimages.com/DQmTbpqyLJ6WVHxsDb8CX73aPQfZBKb47XwMgUMU6fy4fBz/Screen%20Shot%202017-10-18%20at%2011.57.07%20AM.png (Source: <a href=\"https://photos.google.com/share/AF1QipPX0SCl7OzWilt9LnuQliattX4OUCj_8EP65_cTVnBmS1jnYgsGQAieQUc1VQWdgQ?key=aVBxWjhwSzg2RjJWLWRuVFBBZEN1d205bUdEMnhB\">Inceptionism: Going deeper into Neural Networks</a>)</p>\n<p>And videos using DeepDream (first with the lower layers, second with higher layers):</p>\n<p>https://www.youtube.com/watch?v=RTHPRrSEdNE</p>\n<p>https://www.youtube.com/watch?v=gIqKBBxmqho</p>\n<p>There is a website <a href=\"https://dreamdeeply.com/\">DreamDeeply</a>&nbsp;where you can try out deep dream images!</p>\n<p>Like me, you may feel deep dream images using lower neural network layers (video - Deep dreaming of Alice) seems similar to results using style transfer method. In actual, DeepDream is using a very different method.</p>\n<p>Instead of trying to classify a picture like what neural network usually perform, we will have to maximise the similarities the trained network layer found in the input image. Remember the lower and higher layers learn different types of details?</p>\n<p>If you have some basic understanding on Neural Network backpropagation. This <a href=\"https://www.youtube.com/watch?v=BsSmBPmPeYQ\">video</a> gives a good basic explanation on how it is done, also a <a href=\"https://youtu.be/MrBzgvUNr4w\">video</a>&nbsp;explaining it using Google Tensorflow.</p>\n<p>DeepDream creations using the higher layers drift away from more predictable creations. How the higher layers interpret a picture can sometimes change the output image completely into something else. The psychedelic effect of the output is a style of its own. Even though it is still limited to what the trained layers have learned, you may get surprising results!&nbsp;</p>\n<p><br></p>\n<p>Progress is neverending! An <a href=\"https://www.newscientist.com/article/2143784-ai-artist-conjures-up-convincing-fake-worlds-from-memories/\">interesting work</a> by <a href=\"http://cqf.io/\">Qifeng Chen</a> at Stanford University using memory reconstruct method to create dreamlike fake street. Create a scene by labelling the objects to be found in it. Leave the algorithm to reconstruct how it might look like in photo&nbsp;style.</p>\n<p>https://youtu.be/t169yNXX4oU</p>\n<h5><br></h5>\n<p><br></p>\n<h3><strong>4. Creating new styles</strong></h3>\n<p><br></p>\n<p>Without human assistance, can a machine learn to create a drawing or painting style of its own?</p>\n<p>My favourite Shimon can not only improvise music now but also create its <a href=\"https://www.youtube.com/watch?time_continue=4&amp;v=9qrUI-oPQlw\">own classical music</a>.</p>\n<p>Since I unable to find what creating a new drawing and painting styles mean to me. Let me explain my thoughts with a short story.</p>\n<p>For the last 12 months, Don has been sitting in the middle of a big bustling city park filled with beautiful perennial, seasonal flowers and sparse trees. Every day, Don takes in everything that happened in its 360 degrees line of vision. The colourful fun-filled park during the day and during the quiet late night, couples strolling to occasional mugging and vice activities.</p>\n<p>Don not only record what he sees but sort them all into information clusters through its algorithm. Its surrounding will be sorted every 30 seconds into weather, colours, people, animals, insects, sound, spatial, ongoing activities, up to 100 thousands different types of clusters. Creating new clusters when necessary. In each cluster, every piece of sorted information will have a very long list of features; covering different emotional states, level of significance in a situation, design principles, general elements of designs, colours and tones representation, and so on. Each feature has a weight given according to its correlations to what the information is about (eg: a kid laughing will have a higher weight on happiness feature).</p>\n<p>Each morning from 7am-8am, a crowd gathered around. Don's algorithm starts processing all the information it has sorted.Don then starts creating one art piece, reconstructing a random segment of the park. It decides on its own whether to use a computer-generated watercolour, oil pastel, sketch, photorealistic or a mixed style. The daily artwork generated is influenced by what was recorded during last one day, one week, one month and from the day Don was switched on in the park. Similar to our short, mid, long-term memories.</p>\n<p>With learning capabilities, Don can improve its skill through our feedback. After seeing Don's artwork, you decided to push the buttons to rate what feelings are invoked in you. After giving 10 emotions, you caught a sign below a camera reading,&nbsp; \"Love your feedback! Please note your ratings might be normalised if our camera detects significant inconsistencies between what you have rated and your facial expressions. This is to minimise trolling and incorrect data inputs for Don to learn.\"</p>\n<p>Don's first few weeks of artworks are a messy blend of activities happening in the day and night. Gradually over time, some artworks are beautifully blended as an expression of life in the park. When mugging happened the night before, Don thinks it is significant and traumatic enough, using darker shades and violent figures in its artwork. Some days you see a detailed and fine artwork, some days with a queer twist which you felt might indicate a lot of unexpected activities have happened over a period.</p>\n<p>People start calling it fake, spooky, nonsense, scam, artistic, talented, sick, awesome, on and on. Don doesn't care a bit! Only when it has recorded your reactions and words, the next artwork might to some extent be inspired by you.</p>\n<p>How will you think of Don the artist?&nbsp;</p>\n<p><br></p>\n<h3><strong>Will we appreciate fully machine-generated art?</strong></h3>\n<p><br></p>\n<p>Let's first take a look at how we have adapted to modern art after over a century and now a multi-billion dollars market. If you do a search, there are definitely many mixed feelings (more negative) for modern art.</p>\n<p>I would say art is very personal. A great piece of art might be perfect for many but there will always be someone who feels nothing special about it. When a piece of art is meant for you, it becomes a bridge between your inner world and the senses it invoked.</p>\n<p>Machine art will probably go through the same or even more challenging passage to social acceptance. Maybe we should also wonder how the unknown generation after <a href=\"http://time.com/4904288/igen-jean-m-twenge-review/\">iGen</a> will embrace arts.</p>\n<p>To end this, will be some questions to ponder on. If machine creates its own art without human inputs. Can we feel talent in machine artwork? Can we or acclaimed artists really appreciate an art piece or music created by a machine? Can we call even call it a \"Masterpiece\"?</p>\n</html>",
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susdabbleupdated their account properties
2017/11/04 05:36:57
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2017/11/04 05:24:51
accountsusdabble
memo keySTM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig
json metadata{"profile":{"name":"Sus","website":"https://susdabble.com/","profile_image":"https://lh3.googleusercontent.com/ASZgPbpWzEnZt6VZhm4R5iLUAoIW5guKR1HEdIf454aChEoLo665i8fUa5ngmzBsbNHcuYFj_hqukPtCdBkoaymJH1hYKYn8cKjKypMwygvgM-PFB5R-naQy4ZxpXD57jVSp23nLJpGcKAUc3xX2tqcSu2TVolGt8JfD_g2HQF4hrn0HepOIoAxEaZoxa-LRTQTTfMnSuLTCUQKQPLcFP-COb3MlFV_S2VWdgZjtX9YEsQAsbRggllxxutJk14304Yz1vUPS_dQ-Vf6u7tv4utW03cyBffCkOe9JAm5QEfJl1Afrz3NmoojhwEEg1Uy5UA5OwjuLgMWsKtbCM_771Y6mIwg4oyahsDNtHVmSb7zIMNx5Rc032fj20nC5r8WEldH1OIRoeC-8anREzyGZkgB_A2G3XivvGntLTK794_C0lK9E0hE2MYuHLIoIQxLcX6ND-nzr_3g9oq2Yi5FfK9Jrn2RN-_oOoIOA7RQPIOjaKwwsO6IO67BoLPkWHDur_KAsmXQ7h-A_U1qaPm6vWYsIMnhATilhiSlH3d8AWo-e0Td4uOnaNZKCGgoxIzE-2Ia0g8XM8zUYCfHwJ-LSSCLBz9obLq6rWSUL8aCwZg=w994-h859-no","cover_image":"https://lh3.googleusercontent.com/PFG2VmU9USij64dg_pQRhg-ffM8NzGdDPhPlO7FCvMVRLcirPvzYOhFlGz0NEt1YK4QmXRgeCQxiv0ye64RuuN3QQTkfHRbw1Dt9_tZgq_eJKcQMUqnQnQMOK7WeAQcxm99r4El7aBZXHf3EYXRyc2SX4swatnTeitMlCT0-DFAEDP82g8nw4iVoQVefDXjXJXVbgcPpXSiAHiHLJGtxcidl8oVGSNopJoo5mmHd52Hgc_5OEqvwZnQ4qbp-A__usPJ5u5-FoECKQ5qUQN3qI6SFaPOERtWRUE5gSeOSaJl1szaT1MHAqy-d9XOiR2B9gwVEOyvSzKMIBu_crr1WsbhrO0PuLoxAxf_c_T_XkzJ5KTR45uSaNmtZC11SxhRu6zb9yqHNuYg3zKpOtMspdIe4iBIKZBSk2VhoUGOQtLtmDAjB37Re0ryC6DEapxAHFV5jqeqM92xC33AznssuhGVzF7K3C5YcWKqIiFCghvq0zv7JdIGsB9JbdokBa-bpnQ2OU7CGAFW8Q84Qwx2Ut02-jTa8qYrjV1TEdbBRiDwBUlCNkDH_xqZOSyx_gW45C0r4MBipFDfvvi4VMCu_O5-Wnn0rzMRcT9U3S4FxlQ=w2060-h402-no","about":"Dabbling on stuffs that matter. Art, technology, science and nature"}}
Transaction InfoBlock #16918435/Trx 9abe14390416eb8b75cce19a1b4379af98141e6a
View Raw JSON Data
{
  "trx_id": "9abe14390416eb8b75cce19a1b4379af98141e6a",
  "block": 16918435,
  "trx_in_block": 10,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2017-11-04T05:24:51",
  "op": [
    "account_update",
    {
      "account": "susdabble",
      "memo_key": "STM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig",
      "json_metadata": "{\"profile\":{\"name\":\"Sus\",\"website\":\"https://susdabble.com/\",\"profile_image\":\"https://lh3.googleusercontent.com/ASZgPbpWzEnZt6VZhm4R5iLUAoIW5guKR1HEdIf454aChEoLo665i8fUa5ngmzBsbNHcuYFj_hqukPtCdBkoaymJH1hYKYn8cKjKypMwygvgM-PFB5R-naQy4ZxpXD57jVSp23nLJpGcKAUc3xX2tqcSu2TVolGt8JfD_g2HQF4hrn0HepOIoAxEaZoxa-LRTQTTfMnSuLTCUQKQPLcFP-COb3MlFV_S2VWdgZjtX9YEsQAsbRggllxxutJk14304Yz1vUPS_dQ-Vf6u7tv4utW03cyBffCkOe9JAm5QEfJl1Afrz3NmoojhwEEg1Uy5UA5OwjuLgMWsKtbCM_771Y6mIwg4oyahsDNtHVmSb7zIMNx5Rc032fj20nC5r8WEldH1OIRoeC-8anREzyGZkgB_A2G3XivvGntLTK794_C0lK9E0hE2MYuHLIoIQxLcX6ND-nzr_3g9oq2Yi5FfK9Jrn2RN-_oOoIOA7RQPIOjaKwwsO6IO67BoLPkWHDur_KAsmXQ7h-A_U1qaPm6vWYsIMnhATilhiSlH3d8AWo-e0Td4uOnaNZKCGgoxIzE-2Ia0g8XM8zUYCfHwJ-LSSCLBz9obLq6rWSUL8aCwZg=w994-h859-no\",\"cover_image\":\"https://lh3.googleusercontent.com/PFG2VmU9USij64dg_pQRhg-ffM8NzGdDPhPlO7FCvMVRLcirPvzYOhFlGz0NEt1YK4QmXRgeCQxiv0ye64RuuN3QQTkfHRbw1Dt9_tZgq_eJKcQMUqnQnQMOK7WeAQcxm99r4El7aBZXHf3EYXRyc2SX4swatnTeitMlCT0-DFAEDP82g8nw4iVoQVefDXjXJXVbgcPpXSiAHiHLJGtxcidl8oVGSNopJoo5mmHd52Hgc_5OEqvwZnQ4qbp-A__usPJ5u5-FoECKQ5qUQN3qI6SFaPOERtWRUE5gSeOSaJl1szaT1MHAqy-d9XOiR2B9gwVEOyvSzKMIBu_crr1WsbhrO0PuLoxAxf_c_T_XkzJ5KTR45uSaNmtZC11SxhRu6zb9yqHNuYg3zKpOtMspdIe4iBIKZBSk2VhoUGOQtLtmDAjB37Re0ryC6DEapxAHFV5jqeqM92xC33AznssuhGVzF7K3C5YcWKqIiFCghvq0zv7JdIGsB9JbdokBa-bpnQ2OU7CGAFW8Q84Qwx2Ut02-jTa8qYrjV1TEdbBRiDwBUlCNkDH_xqZOSyx_gW45C0r4MBipFDfvvi4VMCu_O5-Wnn0rzMRcT9U3S4FxlQ=w2060-h402-no\",\"about\":\"Dabbling on stuffs that matter. Art, technology, science and nature\"}}"
    }
  ]
}
susdabbleupdated their account properties
2017/11/04 05:19:21
accountsusdabble
memo keySTM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig
json metadata{"profile":{"name":"Sus","website":"https://susdabble.com/","profile_image":"https://lh3.googleusercontent.com/ASZgPbpWzEnZt6VZhm4R5iLUAoIW5guKR1HEdIf454aChEoLo665i8fUa5ngmzBsbNHcuYFj_hqukPtCdBkoaymJH1hYKYn8cKjKypMwygvgM-PFB5R-naQy4ZxpXD57jVSp23nLJpGcKAUc3xX2tqcSu2TVolGt8JfD_g2HQF4hrn0HepOIoAxEaZoxa-LRTQTTfMnSuLTCUQKQPLcFP-COb3MlFV_S2VWdgZjtX9YEsQAsbRggllxxutJk14304Yz1vUPS_dQ-Vf6u7tv4utW03cyBffCkOe9JAm5QEfJl1Afrz3NmoojhwEEg1Uy5UA5OwjuLgMWsKtbCM_771Y6mIwg4oyahsDNtHVmSb7zIMNx5Rc032fj20nC5r8WEldH1OIRoeC-8anREzyGZkgB_A2G3XivvGntLTK794_C0lK9E0hE2MYuHLIoIQxLcX6ND-nzr_3g9oq2Yi5FfK9Jrn2RN-_oOoIOA7RQPIOjaKwwsO6IO67BoLPkWHDur_KAsmXQ7h-A_U1qaPm6vWYsIMnhATilhiSlH3d8AWo-e0Td4uOnaNZKCGgoxIzE-2Ia0g8XM8zUYCfHwJ-LSSCLBz9obLq6rWSUL8aCwZg=w994-h859-no","cover_image":"https://lh3.googleusercontent.com/PFG2VmU9USij64dg_pQRhg-ffM8NzGdDPhPlO7FCvMVRLcirPvzYOhFlGz0NEt1YK4QmXRgeCQxiv0ye64RuuN3QQTkfHRbw1Dt9_tZgq_eJKcQMUqnQnQMOK7WeAQcxm99r4El7aBZXHf3EYXRyc2SX4swatnTeitMlCT0-DFAEDP82g8nw4iVoQVefDXjXJXVbgcPpXSiAHiHLJGtxcidl8oVGSNopJoo5mmHd52Hgc_5OEqvwZnQ4qbp-A__usPJ5u5-FoECKQ5qUQN3qI6SFaPOERtWRUE5gSeOSaJl1szaT1MHAqy-d9XOiR2B9gwVEOyvSzKMIBu_crr1WsbhrO0PuLoxAxf_c_T_XkzJ5KTR45uSaNmtZC11SxhRu6zb9yqHNuYg3zKpOtMspdIe4iBIKZBSk2VhoUGOQtLtmDAjB37Re0ryC6DEapxAHFV5jqeqM92xC33AznssuhGVzF7K3C5YcWKqIiFCghvq0zv7JdIGsB9JbdokBa-bpnQ2OU7CGAFW8Q84Qwx2Ut02-jTa8qYrjV1TEdbBRiDwBUlCNkDH_xqZOSyx_gW45C0r4MBipFDfvvi4VMCu_O5-Wnn0rzMRcT9U3S4FxlQ=w2060-h402-no"}}
Transaction InfoBlock #16918325/Trx 153adbcadc5f1028acd1a97d002d618749b2cdc0
View Raw JSON Data
{
  "trx_id": "153adbcadc5f1028acd1a97d002d618749b2cdc0",
  "block": 16918325,
  "trx_in_block": 11,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2017-11-04T05:19:21",
  "op": [
    "account_update",
    {
      "account": "susdabble",
      "memo_key": "STM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig",
      "json_metadata": "{\"profile\":{\"name\":\"Sus\",\"website\":\"https://susdabble.com/\",\"profile_image\":\"https://lh3.googleusercontent.com/ASZgPbpWzEnZt6VZhm4R5iLUAoIW5guKR1HEdIf454aChEoLo665i8fUa5ngmzBsbNHcuYFj_hqukPtCdBkoaymJH1hYKYn8cKjKypMwygvgM-PFB5R-naQy4ZxpXD57jVSp23nLJpGcKAUc3xX2tqcSu2TVolGt8JfD_g2HQF4hrn0HepOIoAxEaZoxa-LRTQTTfMnSuLTCUQKQPLcFP-COb3MlFV_S2VWdgZjtX9YEsQAsbRggllxxutJk14304Yz1vUPS_dQ-Vf6u7tv4utW03cyBffCkOe9JAm5QEfJl1Afrz3NmoojhwEEg1Uy5UA5OwjuLgMWsKtbCM_771Y6mIwg4oyahsDNtHVmSb7zIMNx5Rc032fj20nC5r8WEldH1OIRoeC-8anREzyGZkgB_A2G3XivvGntLTK794_C0lK9E0hE2MYuHLIoIQxLcX6ND-nzr_3g9oq2Yi5FfK9Jrn2RN-_oOoIOA7RQPIOjaKwwsO6IO67BoLPkWHDur_KAsmXQ7h-A_U1qaPm6vWYsIMnhATilhiSlH3d8AWo-e0Td4uOnaNZKCGgoxIzE-2Ia0g8XM8zUYCfHwJ-LSSCLBz9obLq6rWSUL8aCwZg=w994-h859-no\",\"cover_image\":\"https://lh3.googleusercontent.com/PFG2VmU9USij64dg_pQRhg-ffM8NzGdDPhPlO7FCvMVRLcirPvzYOhFlGz0NEt1YK4QmXRgeCQxiv0ye64RuuN3QQTkfHRbw1Dt9_tZgq_eJKcQMUqnQnQMOK7WeAQcxm99r4El7aBZXHf3EYXRyc2SX4swatnTeitMlCT0-DFAEDP82g8nw4iVoQVefDXjXJXVbgcPpXSiAHiHLJGtxcidl8oVGSNopJoo5mmHd52Hgc_5OEqvwZnQ4qbp-A__usPJ5u5-FoECKQ5qUQN3qI6SFaPOERtWRUE5gSeOSaJl1szaT1MHAqy-d9XOiR2B9gwVEOyvSzKMIBu_crr1WsbhrO0PuLoxAxf_c_T_XkzJ5KTR45uSaNmtZC11SxhRu6zb9yqHNuYg3zKpOtMspdIe4iBIKZBSk2VhoUGOQtLtmDAjB37Re0ryC6DEapxAHFV5jqeqM92xC33AznssuhGVzF7K3C5YcWKqIiFCghvq0zv7JdIGsB9JbdokBa-bpnQ2OU7CGAFW8Q84Qwx2Ut02-jTa8qYrjV1TEdbBRiDwBUlCNkDH_xqZOSyx_gW45C0r4MBipFDfvvi4VMCu_O5-Wnn0rzMRcT9U3S4FxlQ=w2060-h402-no\"}}"
    }
  ]
}
susdabbleupdated their account properties
2017/11/04 05:18:03
accountsusdabble
memo keySTM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig
json metadata{"profile":{"name":"Sus","website":"https://susdabble.com/","profile_image":"https://lh3.googleusercontent.com/ASZgPbpWzEnZt6VZhm4R5iLUAoIW5guKR1HEdIf454aChEoLo665i8fUa5ngmzBsbNHcuYFj_hqukPtCdBkoaymJH1hYKYn8cKjKypMwygvgM-PFB5R-naQy4ZxpXD57jVSp23nLJpGcKAUc3xX2tqcSu2TVolGt8JfD_g2HQF4hrn0HepOIoAxEaZoxa-LRTQTTfMnSuLTCUQKQPLcFP-COb3MlFV_S2VWdgZjtX9YEsQAsbRggllxxutJk14304Yz1vUPS_dQ-Vf6u7tv4utW03cyBffCkOe9JAm5QEfJl1Afrz3NmoojhwEEg1Uy5UA5OwjuLgMWsKtbCM_771Y6mIwg4oyahsDNtHVmSb7zIMNx5Rc032fj20nC5r8WEldH1OIRoeC-8anREzyGZkgB_A2G3XivvGntLTK794_C0lK9E0hE2MYuHLIoIQxLcX6ND-nzr_3g9oq2Yi5FfK9Jrn2RN-_oOoIOA7RQPIOjaKwwsO6IO67BoLPkWHDur_KAsmXQ7h-A_U1qaPm6vWYsIMnhATilhiSlH3d8AWo-e0Td4uOnaNZKCGgoxIzE-2Ia0g8XM8zUYCfHwJ-LSSCLBz9obLq6rWSUL8aCwZg=w994-h859-no","cover_image":"https://photos.google.com/u/2/search/_tra_/photo/AF1QipNcJr41UvFtrSQWSoJVEc5kzdiMHPU-gG_RsYjE"}}
Transaction InfoBlock #16918299/Trx 9105e21f3f5372eb0d38f887fed75daa939f3123
View Raw JSON Data
{
  "trx_id": "9105e21f3f5372eb0d38f887fed75daa939f3123",
  "block": 16918299,
  "trx_in_block": 3,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2017-11-04T05:18:03",
  "op": [
    "account_update",
    {
      "account": "susdabble",
      "memo_key": "STM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig",
      "json_metadata": "{\"profile\":{\"name\":\"Sus\",\"website\":\"https://susdabble.com/\",\"profile_image\":\"https://lh3.googleusercontent.com/ASZgPbpWzEnZt6VZhm4R5iLUAoIW5guKR1HEdIf454aChEoLo665i8fUa5ngmzBsbNHcuYFj_hqukPtCdBkoaymJH1hYKYn8cKjKypMwygvgM-PFB5R-naQy4ZxpXD57jVSp23nLJpGcKAUc3xX2tqcSu2TVolGt8JfD_g2HQF4hrn0HepOIoAxEaZoxa-LRTQTTfMnSuLTCUQKQPLcFP-COb3MlFV_S2VWdgZjtX9YEsQAsbRggllxxutJk14304Yz1vUPS_dQ-Vf6u7tv4utW03cyBffCkOe9JAm5QEfJl1Afrz3NmoojhwEEg1Uy5UA5OwjuLgMWsKtbCM_771Y6mIwg4oyahsDNtHVmSb7zIMNx5Rc032fj20nC5r8WEldH1OIRoeC-8anREzyGZkgB_A2G3XivvGntLTK794_C0lK9E0hE2MYuHLIoIQxLcX6ND-nzr_3g9oq2Yi5FfK9Jrn2RN-_oOoIOA7RQPIOjaKwwsO6IO67BoLPkWHDur_KAsmXQ7h-A_U1qaPm6vWYsIMnhATilhiSlH3d8AWo-e0Td4uOnaNZKCGgoxIzE-2Ia0g8XM8zUYCfHwJ-LSSCLBz9obLq6rWSUL8aCwZg=w994-h859-no\",\"cover_image\":\"https://photos.google.com/u/2/search/_tra_/photo/AF1QipNcJr41UvFtrSQWSoJVEc5kzdiMHPU-gG_RsYjE\"}}"
    }
  ]
}
susdabbleupdated their account properties
2017/11/04 05:05:03
accountsusdabble
memo keySTM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig
json metadata{"profile":{"name":"Sus","website":"https://susdabble.com/","profile_image":"https://lh3.googleusercontent.com/ASZgPbpWzEnZt6VZhm4R5iLUAoIW5guKR1HEdIf454aChEoLo665i8fUa5ngmzBsbNHcuYFj_hqukPtCdBkoaymJH1hYKYn8cKjKypMwygvgM-PFB5R-naQy4ZxpXD57jVSp23nLJpGcKAUc3xX2tqcSu2TVolGt8JfD_g2HQF4hrn0HepOIoAxEaZoxa-LRTQTTfMnSuLTCUQKQPLcFP-COb3MlFV_S2VWdgZjtX9YEsQAsbRggllxxutJk14304Yz1vUPS_dQ-Vf6u7tv4utW03cyBffCkOe9JAm5QEfJl1Afrz3NmoojhwEEg1Uy5UA5OwjuLgMWsKtbCM_771Y6mIwg4oyahsDNtHVmSb7zIMNx5Rc032fj20nC5r8WEldH1OIRoeC-8anREzyGZkgB_A2G3XivvGntLTK794_C0lK9E0hE2MYuHLIoIQxLcX6ND-nzr_3g9oq2Yi5FfK9Jrn2RN-_oOoIOA7RQPIOjaKwwsO6IO67BoLPkWHDur_KAsmXQ7h-A_U1qaPm6vWYsIMnhATilhiSlH3d8AWo-e0Td4uOnaNZKCGgoxIzE-2Ia0g8XM8zUYCfHwJ-LSSCLBz9obLq6rWSUL8aCwZg=w994-h859-no"}}
Transaction InfoBlock #16918039/Trx 82b5b98c2ca6f231bd279471957e4b12d5084c2c
View Raw JSON Data
{
  "trx_id": "82b5b98c2ca6f231bd279471957e4b12d5084c2c",
  "block": 16918039,
  "trx_in_block": 20,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2017-11-04T05:05:03",
  "op": [
    "account_update",
    {
      "account": "susdabble",
      "memo_key": "STM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig",
      "json_metadata": "{\"profile\":{\"name\":\"Sus\",\"website\":\"https://susdabble.com/\",\"profile_image\":\"https://lh3.googleusercontent.com/ASZgPbpWzEnZt6VZhm4R5iLUAoIW5guKR1HEdIf454aChEoLo665i8fUa5ngmzBsbNHcuYFj_hqukPtCdBkoaymJH1hYKYn8cKjKypMwygvgM-PFB5R-naQy4ZxpXD57jVSp23nLJpGcKAUc3xX2tqcSu2TVolGt8JfD_g2HQF4hrn0HepOIoAxEaZoxa-LRTQTTfMnSuLTCUQKQPLcFP-COb3MlFV_S2VWdgZjtX9YEsQAsbRggllxxutJk14304Yz1vUPS_dQ-Vf6u7tv4utW03cyBffCkOe9JAm5QEfJl1Afrz3NmoojhwEEg1Uy5UA5OwjuLgMWsKtbCM_771Y6mIwg4oyahsDNtHVmSb7zIMNx5Rc032fj20nC5r8WEldH1OIRoeC-8anREzyGZkgB_A2G3XivvGntLTK794_C0lK9E0hE2MYuHLIoIQxLcX6ND-nzr_3g9oq2Yi5FfK9Jrn2RN-_oOoIOA7RQPIOjaKwwsO6IO67BoLPkWHDur_KAsmXQ7h-A_U1qaPm6vWYsIMnhATilhiSlH3d8AWo-e0Td4uOnaNZKCGgoxIzE-2Ia0g8XM8zUYCfHwJ-LSSCLBz9obLq6rWSUL8aCwZg=w994-h859-no\"}}"
    }
  ]
}
susdabbleupdated their account properties
2017/11/04 05:04:06
accountsusdabble
memo keySTM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig
json metadata{"profile":{"name":"Sus","website":"https://susdabble.com/"}}
Transaction InfoBlock #16918020/Trx 3f61f6a37770cd707ed9e940fe6bb0a2c03ca6bb
View Raw JSON Data
{
  "trx_id": "3f61f6a37770cd707ed9e940fe6bb0a2c03ca6bb",
  "block": 16918020,
  "trx_in_block": 19,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2017-11-04T05:04:06",
  "op": [
    "account_update",
    {
      "account": "susdabble",
      "memo_key": "STM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig",
      "json_metadata": "{\"profile\":{\"name\":\"Sus\",\"website\":\"https://susdabble.com/\"}}"
    }
  ]
}
susdabbleupdated their account properties
2017/11/04 05:02:51
accountsusdabble
memo keySTM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig
json metadata{"profile":{"name":"Sus","profile_image":"https://lh3.googleusercontent.com/ASZgPbpWzEnZt6VZhm4R5iLUAoIW5guKR1HEdIf454aChEoLo665i8fUa5ngmzBsbNHcuYFj_hqukPtCdBkoaymJH1hYKYn8cKjKypMwygvgM-PFB5R-naQy4ZxpXD57jVSp23nLJpGcKAUc3xX2tqcSu2TVolGt8JfD_g2HQF4hrn0HepOIoAxEaZoxa-LRTQTTfMnSuLTCUQKQPLcFP-COb3MlFV_S2VWdgZjtX9YEsQAsbRggllxxutJk14304Yz1vUPS_dQ-Vf6u7tv4utW03cyBffCkOe9JAm5QEfJl1Afrz3NmoojhwEEg1Uy5UA5OwjuLgMWsKtbCM_771Y6mIwg4oyahsDNtHVmSb7zIMNx5Rc032fj20nC5r8WEldH1OIRoeC-8anREzyGZkgB_A2G3XivvGntLTK794_C0lK9E0hE2MYuHLIoIQxLcX6ND-nzr_3g9oq2Yi5FfK9Jrn2RN-_oOoIOA7RQPIOjaKwwsO6IO67BoLPkWHDur_KAsmXQ7h-A_U1qaPm6vWYsIMnhATilhiSlH3d8AWo-e0Td4uOnaNZKCGgoxIzE-2Ia0g8XM8zUYCfHwJ-LSSCLBz9obLq6rWSUL8aCwZg=w994-h859-no","website":"https://susdabble.com/"}}
Transaction InfoBlock #16917995/Trx 4a638ad9e741ce5de0eab297706f64e641baacc3
View Raw JSON Data
{
  "trx_id": "4a638ad9e741ce5de0eab297706f64e641baacc3",
  "block": 16917995,
  "trx_in_block": 10,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2017-11-04T05:02:51",
  "op": [
    "account_update",
    {
      "account": "susdabble",
      "memo_key": "STM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig",
      "json_metadata": "{\"profile\":{\"name\":\"Sus\",\"profile_image\":\"https://lh3.googleusercontent.com/ASZgPbpWzEnZt6VZhm4R5iLUAoIW5guKR1HEdIf454aChEoLo665i8fUa5ngmzBsbNHcuYFj_hqukPtCdBkoaymJH1hYKYn8cKjKypMwygvgM-PFB5R-naQy4ZxpXD57jVSp23nLJpGcKAUc3xX2tqcSu2TVolGt8JfD_g2HQF4hrn0HepOIoAxEaZoxa-LRTQTTfMnSuLTCUQKQPLcFP-COb3MlFV_S2VWdgZjtX9YEsQAsbRggllxxutJk14304Yz1vUPS_dQ-Vf6u7tv4utW03cyBffCkOe9JAm5QEfJl1Afrz3NmoojhwEEg1Uy5UA5OwjuLgMWsKtbCM_771Y6mIwg4oyahsDNtHVmSb7zIMNx5Rc032fj20nC5r8WEldH1OIRoeC-8anREzyGZkgB_A2G3XivvGntLTK794_C0lK9E0hE2MYuHLIoIQxLcX6ND-nzr_3g9oq2Yi5FfK9Jrn2RN-_oOoIOA7RQPIOjaKwwsO6IO67BoLPkWHDur_KAsmXQ7h-A_U1qaPm6vWYsIMnhATilhiSlH3d8AWo-e0Td4uOnaNZKCGgoxIzE-2Ia0g8XM8zUYCfHwJ-LSSCLBz9obLq6rWSUL8aCwZg=w994-h859-no\",\"website\":\"https://susdabble.com/\"}}"
    }
  ]
}
susdabbleupdated their account properties
2017/11/04 05:00:15
accountsusdabble
memo keySTM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig
json metadata{"profile":{"name":"Sus","profile_image":"https://lh3.googleusercontent.com/rD4HHWN0ad4PxzzC7DG8TsCdWlY4C0RfHTh8E8TfxCBqsMLGXmCnZuAfUn2zW8-pjbCiCd3fAA=w328-h268-no","website":"https://susdabble.com/"}}
Transaction InfoBlock #16917943/Trx 44ecf6d0fbc32aa548aef9a7ca0004414507eafd
View Raw JSON Data
{
  "trx_id": "44ecf6d0fbc32aa548aef9a7ca0004414507eafd",
  "block": 16917943,
  "trx_in_block": 12,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2017-11-04T05:00:15",
  "op": [
    "account_update",
    {
      "account": "susdabble",
      "memo_key": "STM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig",
      "json_metadata": "{\"profile\":{\"name\":\"Sus\",\"profile_image\":\"https://lh3.googleusercontent.com/rD4HHWN0ad4PxzzC7DG8TsCdWlY4C0RfHTh8E8TfxCBqsMLGXmCnZuAfUn2zW8-pjbCiCd3fAA=w328-h268-no\",\"website\":\"https://susdabble.com/\"}}"
    }
  ]
}
susdabbleupdated their account properties
2017/11/04 04:43:03
accountsusdabble
memo keySTM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig
json metadata{"profile":{"name":"Sus","profile_image":"https://lh3.googleusercontent.com/07cht2d8cxurdSPFQZ3CBJ00yYsGyvyo_tJMkCvheQVABTl8OXZWockrlEZsYpxfJx0VmRpoFOhaPzkHe-bESZwsayRY5K2lWHSQTLx0n_KstwXXJoOAC7isuuPYAiIRtgOnjAFfzelZL1XbPaEj9u5ZHD34znMhZTFYjUZNsdFZGfKFUFk_s9d1_ea2nFKNn2XBiYWys_xo11SLbCGaueZV5az4mDBmfVKEcLQg1h2eP4ImrblnhKoaom1txb4z_JyQaRy3o8bfetb_oWMLHkgZsJHDsVeuacke7cdENKpHUjQJEljEfbz05ivSlfGAj8AQX2jKijDq1FWQjGAj0slGpBivs9iRYMQWb4kcYW8V7fLJLz3QQQlMkTv8TkqHH7NrIinxxc2m5pnqS1--urRJee1DzvzBWUQB48bAwRukSZINj2LcLDdDv0Kk-6c5Y26140A1W7JDGkFnkg68i34LWmDRuKMgbBmy0Ct5BGg4d-WDhrpMkLma_wTh1Agkza_3gNF7SEkHTLWq1XQae46-z3rnXQ-KBsvExPCIjnQTfQBES6miSSYGQmt2jVZjJmvZFC5FHsqFSyqandRhPgnLbwJBa3gwkVBQ_6_uBQ=w1382-h1280-no","website":"https://susdabble.com/"}}
Transaction InfoBlock #16917599/Trx c75d0daa384ec5037cf4003c5465c6dccf621fca
View Raw JSON Data
{
  "trx_id": "c75d0daa384ec5037cf4003c5465c6dccf621fca",
  "block": 16917599,
  "trx_in_block": 2,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2017-11-04T04:43:03",
  "op": [
    "account_update",
    {
      "account": "susdabble",
      "memo_key": "STM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig",
      "json_metadata": "{\"profile\":{\"name\":\"Sus\",\"profile_image\":\"https://lh3.googleusercontent.com/07cht2d8cxurdSPFQZ3CBJ00yYsGyvyo_tJMkCvheQVABTl8OXZWockrlEZsYpxfJx0VmRpoFOhaPzkHe-bESZwsayRY5K2lWHSQTLx0n_KstwXXJoOAC7isuuPYAiIRtgOnjAFfzelZL1XbPaEj9u5ZHD34znMhZTFYjUZNsdFZGfKFUFk_s9d1_ea2nFKNn2XBiYWys_xo11SLbCGaueZV5az4mDBmfVKEcLQg1h2eP4ImrblnhKoaom1txb4z_JyQaRy3o8bfetb_oWMLHkgZsJHDsVeuacke7cdENKpHUjQJEljEfbz05ivSlfGAj8AQX2jKijDq1FWQjGAj0slGpBivs9iRYMQWb4kcYW8V7fLJLz3QQQlMkTv8TkqHH7NrIinxxc2m5pnqS1--urRJee1DzvzBWUQB48bAwRukSZINj2LcLDdDv0Kk-6c5Y26140A1W7JDGkFnkg68i34LWmDRuKMgbBmy0Ct5BGg4d-WDhrpMkLma_wTh1Agkza_3gNF7SEkHTLWq1XQae46-z3rnXQ-KBsvExPCIjnQTfQBES6miSSYGQmt2jVZjJmvZFC5FHsqFSyqandRhPgnLbwJBa3gwkVBQ_6_uBQ=w1382-h1280-no\",\"website\":\"https://susdabble.com/\"}}"
    }
  ]
}
susdabbleupdated their account properties
2017/11/04 04:35:36
accountsusdabble
memo keySTM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig
json metadata{"profile":{"name":"Sus","profile_image":"https://photos.google.com/u/2/photo/AF1QipOTvDgkA5uCUN29zHwzqeSZZinVMc_81pQ9Do4z","website":"https://susdabble.com/"}}
Transaction InfoBlock #16917450/Trx 99565f1625b93d839a001a8dc27a10bfec7d76e1
View Raw JSON Data
{
  "trx_id": "99565f1625b93d839a001a8dc27a10bfec7d76e1",
  "block": 16917450,
  "trx_in_block": 13,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2017-11-04T04:35:36",
  "op": [
    "account_update",
    {
      "account": "susdabble",
      "memo_key": "STM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig",
      "json_metadata": "{\"profile\":{\"name\":\"Sus\",\"profile_image\":\"https://photos.google.com/u/2/photo/AF1QipOTvDgkA5uCUN29zHwzqeSZZinVMc_81pQ9Do4z\",\"website\":\"https://susdabble.com/\"}}"
    }
  ]
}
susdabbleupdated their account properties
2017/11/04 04:21:57
accountsusdabble
memo keySTM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig
json metadata{"profile":{"name":"Sus","profile_image":"https://en.gravatar.com/we2linksc","website":"https://susdabble.com/"}}
Transaction InfoBlock #16917178/Trx 2c876e0cc4f2607a2b52bffbbaf2a266bba40f35
View Raw JSON Data
{
  "trx_id": "2c876e0cc4f2607a2b52bffbbaf2a266bba40f35",
  "block": 16917178,
  "trx_in_block": 3,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2017-11-04T04:21:57",
  "op": [
    "account_update",
    {
      "account": "susdabble",
      "memo_key": "STM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig",
      "json_metadata": "{\"profile\":{\"name\":\"Sus\",\"profile_image\":\"https://en.gravatar.com/we2linksc\",\"website\":\"https://susdabble.com/\"}}"
    }
  ]
}
susdabbleupdated their account properties
2017/11/04 04:17:57
accountsusdabble
memo keySTM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig
json metadata{"profile":{"name":"Sus"}}
Transaction InfoBlock #16917098/Trx b99c36af598be9d7a6dea098a11ecd22de7a65d0
View Raw JSON Data
{
  "trx_id": "b99c36af598be9d7a6dea098a11ecd22de7a65d0",
  "block": 16917098,
  "trx_in_block": 5,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2017-11-04T04:17:57",
  "op": [
    "account_update",
    {
      "account": "susdabble",
      "memo_key": "STM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig",
      "json_metadata": "{\"profile\":{\"name\":\"Sus\"}}"
    }
  ]
}
susdabbleupdated their account properties
2017/11/04 04:15:48
accountsusdabble
memo keySTM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig
json metadata{"profile":{"name":"Sus","profile_image":"http://en.gravatar.com/we2linksc"}}
Transaction InfoBlock #16917055/Trx 8c09b7dd88ec4538a8122d83b8f2f63488b90dcc
View Raw JSON Data
{
  "trx_id": "8c09b7dd88ec4538a8122d83b8f2f63488b90dcc",
  "block": 16917055,
  "trx_in_block": 3,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2017-11-04T04:15:48",
  "op": [
    "account_update",
    {
      "account": "susdabble",
      "memo_key": "STM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig",
      "json_metadata": "{\"profile\":{\"name\":\"Sus\",\"profile_image\":\"http://en.gravatar.com/we2linksc\"}}"
    }
  ]
}
susdabbleupdated their account properties
2017/11/01 15:44:09
accountsusdabble
memo keySTM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig
json metadata{"profile":{"name":"Sus"}}
Transaction InfoBlock #16844435/Trx 6246a124e10c01eb52988400cdf62f1aed18ed5f
View Raw JSON Data
{
  "trx_id": "6246a124e10c01eb52988400cdf62f1aed18ed5f",
  "block": 16844435,
  "trx_in_block": 21,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2017-11-01T15:44:09",
  "op": [
    "account_update",
    {
      "account": "susdabble",
      "memo_key": "STM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig",
      "json_metadata": "{\"profile\":{\"name\":\"Sus\"}}"
    }
  ]
}
2017/08/22 12:39:12
votersusdabble
authorterrybrock
permlink3-tips-to-earn-more-in-steemit-interview-with-kevin-wong
weight10000 (100.00%)
Transaction InfoBlock #14797372/Trx 4bf39c10d215a82aa6c64202315016c23d3a3b5b
View Raw JSON Data
{
  "trx_id": "4bf39c10d215a82aa6c64202315016c23d3a3b5b",
  "block": 14797372,
  "trx_in_block": 11,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2017-08-22T12:39:12",
  "op": [
    "vote",
    {
      "voter": "susdabble",
      "author": "terrybrock",
      "permlink": "3-tips-to-earn-more-in-steemit-interview-with-kevin-wong",
      "weight": 10000
    }
  ]
}
2017/08/22 12:39:03
required auths[]
required posting auths["susdabble"]
idfollow
json["follow",{"follower":"susdabble","following":"kevinwong","what":["blog"]}]
Transaction InfoBlock #14797369/Trx 2c3ec09aef80e3ab507245af36a050719c932f96
View Raw JSON Data
{
  "trx_id": "2c3ec09aef80e3ab507245af36a050719c932f96",
  "block": 14797369,
  "trx_in_block": 15,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2017-08-22T12:39:03",
  "op": [
    "custom_json",
    {
      "required_auths": [],
      "required_posting_auths": [
        "susdabble"
      ],
      "id": "follow",
      "json": "[\"follow\",{\"follower\":\"susdabble\",\"following\":\"kevinwong\",\"what\":[\"blog\"]}]"
    }
  ]
}
2017/08/22 12:38:36
required auths[]
required posting auths["susdabble"]
idfollow
json["follow",{"follower":"susdabble","following":"sndbox","what":["blog"]}]
Transaction InfoBlock #14797360/Trx a97bb712c1cd0f5d89f81714e6e69b88cb340418
View Raw JSON Data
{
  "trx_id": "a97bb712c1cd0f5d89f81714e6e69b88cb340418",
  "block": 14797360,
  "trx_in_block": 11,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2017-08-22T12:38:36",
  "op": [
    "custom_json",
    {
      "required_auths": [],
      "required_posting_auths": [
        "susdabble"
      ],
      "id": "follow",
      "json": "[\"follow\",{\"follower\":\"susdabble\",\"following\":\"sndbox\",\"what\":[\"blog\"]}]"
    }
  ]
}
steemcreated a new account: @susdabble
2017/08/21 14:37:57
fee0.500 STEEM
delegation57000.000000 VESTS
creatorsteem
new account namesusdabble
owner{"weight_threshold":1,"account_auths":[],"key_auths":[["STM5dhB6xzHfftXCn8A47WrNhJPDQLsT4wY1U847mAQAzE15KvneT",1]]}
active{"weight_threshold":1,"account_auths":[],"key_auths":[["STM6UBb6dJzCg21rd59rmj87gjRSqHSBEkMYDHULPBYaiHE7jwED3",1]]}
posting{"weight_threshold":1,"account_auths":[],"key_auths":[["STM7yeupirf6mDzVRAcFyv9NqpnwaGyrsouURYAo6YTCqR4aq6rUz",1]]}
memo keySTM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig
json metadata
extensions[]
Transaction InfoBlock #14770953/Trx ad764d310fa75a10491ccb324ec2d4b3b673e3c9
View Raw JSON Data
{
  "trx_id": "ad764d310fa75a10491ccb324ec2d4b3b673e3c9",
  "block": 14770953,
  "trx_in_block": 0,
  "op_in_trx": 0,
  "virtual_op": 0,
  "timestamp": "2017-08-21T14:37:57",
  "op": [
    "account_create_with_delegation",
    {
      "fee": "0.500 STEEM",
      "delegation": "57000.000000 VESTS",
      "creator": "steem",
      "new_account_name": "susdabble",
      "owner": {
        "weight_threshold": 1,
        "account_auths": [],
        "key_auths": [
          [
            "STM5dhB6xzHfftXCn8A47WrNhJPDQLsT4wY1U847mAQAzE15KvneT",
            1
          ]
        ]
      },
      "active": {
        "weight_threshold": 1,
        "account_auths": [],
        "key_auths": [
          [
            "STM6UBb6dJzCg21rd59rmj87gjRSqHSBEkMYDHULPBYaiHE7jwED3",
            1
          ]
        ]
      },
      "posting": {
        "weight_threshold": 1,
        "account_auths": [],
        "key_auths": [
          [
            "STM7yeupirf6mDzVRAcFyv9NqpnwaGyrsouURYAo6YTCqR4aq6rUz",
            1
          ]
        ]
      },
      "memo_key": "STM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig",
      "json_metadata": "",
      "extensions": []
    }
  ]
}

Account Metadata

POSTING JSON METADATA
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JSON METADATA
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Auth Keys

Owner
Single Signature
Public Keys
STM5dhB6xzHfftXCn8A47WrNhJPDQLsT4wY1U847mAQAzE15KvneT1/1
Active
Single Signature
Public Keys
STM6UBb6dJzCg21rd59rmj87gjRSqHSBEkMYDHULPBYaiHE7jwED31/1
Posting
Single Signature
Public Keys
STM7yeupirf6mDzVRAcFyv9NqpnwaGyrsouURYAo6YTCqR4aq6rUz1/1
Memo
STM5w4BEXfpsRAqVxjahEropqpTs342cppsLTuQLN4Nd9nVWbs9ig
{
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    "weight_threshold": 1,
    "account_auths": [],
    "key_auths": [
      [
        "STM5dhB6xzHfftXCn8A47WrNhJPDQLsT4wY1U847mAQAzE15KvneT",
        1
      ]
    ]
  },
  "active": {
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    "account_auths": [],
    "key_auths": [
      [
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}

Witness Votes

0 / 30
No active witness votes.
[]