Machine Generated Data
Tags
Amazon
created on 2023-10-05
Water | 99.8 | |
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Waterfront | 99.8 | |
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Adult | 99.5 | |
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Male | 99.5 | |
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Man | 99.5 | |
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Person | 99.5 | |
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Person | 97.9 | |
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Person | 95.6 | |
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Adult | 90.7 | |
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Person | 90.7 | |
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Bride | 90.7 | |
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Female | 90.7 | |
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Wedding | 90.7 | |
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Woman | 90.7 | |
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Outdoors | 89.8 | |
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Person | 87.2 | |
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Person | 79.5 | |
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Play Area | 78.9 | |
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Person | 78.1 | |
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Transportation | 71.6 | |
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Vehicle | 71.6 | |
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Head | 64.9 | |
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Face | 61.1 | |
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Outdoor Play Area | 58 | |
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Aircraft | 57.4 | |
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Watercraft | 57 | |
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Yacht | 56.6 | |
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Motorcycle | 56.1 | |
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Machine | 56 | |
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Spoke | 56 | |
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Handrail | 55.8 | |
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Helicopter | 55.7 | |
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Boat | 55.6 | |
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Sailboat | 55.6 | |
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Person | 55.5 | |
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Pier | 55.4 | |
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Clarifai
created on 2018-05-10
Imagga
created on 2023-10-05
machine | 34.8 | |
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factory | 33.4 | |
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industry | 32.4 | |
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industrial | 29 | |
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device | 25.9 | |
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steel | 24.3 | |
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building | 22.5 | |
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loom | 19.9 | |
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structure | 19.4 | |
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power | 19.3 | |
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construction | 18.8 | |
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work | 16.5 | |
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track | 16.3 | |
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concrete | 16.3 | |
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train | 16.2 | |
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textile machine | 16.2 | |
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transportation | 16.1 | |
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old | 16 | |
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plant | 16 | |
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business | 15.2 | |
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iron | 14.9 | |
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equipment | 14.9 | |
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metal | 14.5 | |
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energy | 14.3 | |
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station | 13.8 | |
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pollution | 13.5 | |
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tank | 12.5 | |
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heavy | 12.4 | |
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working | 12.4 | |
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sky | 12.1 | |
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architecture | 11.7 | |
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vehicle | 11.5 | |
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man | 11.4 | |
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engineering | 11.4 | |
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builder | 11.1 | |
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technology | 11.1 | |
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transport | 11 | |
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city | 10.8 | |
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railway | 10.8 | |
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environment | 10.7 | |
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fuel | 10.6 | |
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machinery | 10.3 | |
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inclined plane | 10 | |
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conveyance | 9.7 | |
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urban | 9.6 | |
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water | 9.3 | |
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frame | 9.2 | |
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container | 9.1 | |
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worker | 8.9 | |
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rail | 8.8 | |
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manufacturing | 8.8 | |
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production | 8.7 | |
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pipe | 8.7 | |
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gas | 8.7 | |
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travel | 8.4 | |
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vintage | 8.3 | |
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vessel | 8.2 | |
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men | 7.7 | |
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supply | 7.7 | |
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electric | 7.5 | |
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oil | 7.4 | |
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new | 7.3 | |
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people | 7.2 | |
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dirty | 7.2 | |
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tool | 7.2 | |
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black | 7.2 | |
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river | 7.1 | |
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male | 7.1 | |
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job | 7.1 | |
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wheeled vehicle | 7 | |
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modern | 7 | |
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diesel | 7 | |
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Google
created on 2018-05-10
photograph | 94.8 | |
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black and white | 86.6 | |
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monochrome photography | 64.5 | |
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monochrome | 63.7 | |
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vehicle | 54.8 | |
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angle | 54.6 | |
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Color Analysis
Face analysis
Amazon

AWS Rekognition
Age | 35-43 |
Gender | Male, 99.9% |
Happy | 92% |
Surprised | 7.3% |
Fear | 5.9% |
Calm | 5.3% |
Sad | 2.2% |
Angry | 0.2% |
Disgusted | 0.2% |
Confused | 0.1% |

AWS Rekognition
Age | 24-34 |
Gender | Male, 96.4% |
Sad | 99% |
Surprised | 42.7% |
Fear | 6.3% |
Calm | 6.2% |
Confused | 2.6% |
Angry | 2% |
Disgusted | 0.8% |
Happy | 0.6% |
Feature analysis
Categories
Imagga
cars vehicles | 35% | |
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paintings art | 20.3% | |
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streetview architecture | 14.3% | |
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beaches seaside | 13.2% | |
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nature landscape | 11.8% | |
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pets animals | 3.6% | |
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Captions
Microsoft
created on 2018-05-10
a man standing in front of a building | 84.3% | |
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a man standing next to a building | 82.1% | |
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a man standing on top of a building | 77% | |
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Text analysis
Amazon

his

PENNY

3

PENNY ARCAD

ARCAD