Machine Generated Data
Tags
Amazon
created on 2022-03-11
Person | 99.7 | |
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Human | 99.7 | |
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Clothing | 99.5 | |
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Apparel | 99.5 | |
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Person | 99.1 | |
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Person | 98.7 | |
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Person | 98.5 | |
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Person | 97.3 | |
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Person | 95.8 | |
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Person | 95.7 | |
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Person | 95.3 | |
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Person | 94.3 | |
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Person | 94.2 | |
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Shorts | 93.4 | |
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Person | 91.2 | |
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Helmet | 89.6 | |
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Helmet | 89.3 | |
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People | 87.1 | |
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Helmet | 85.7 | |
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Person | 85.5 | |
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Person | 84.7 | |
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Helmet | 84.5 | |
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Helmet | 84.1 | |
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Person | 80.8 | |
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Person | 75.9 | |
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Female | 75.8 | |
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Helmet | 73.4 | |
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Text | 65.4 | |
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Sport | 62.5 | |
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Sports | 62.5 | |
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Face | 60.2 | |
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Suit | 58.3 | |
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Coat | 58.3 | |
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Overcoat | 58.3 | |
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Team | 57.3 | |
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Team Sport | 56.1 | |
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Kid | 55.7 | |
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Child | 55.7 | |
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Woman | 55.3 | |
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Person | 45.6 | |
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Person | 41.7 | |
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Clarifai
created on 2023-10-22
Imagga
created on 2022-03-11
graffito | 88.8 | |
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decoration | 61.6 | |
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freight car | 42.7 | |
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car | 33.7 | |
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old | 30.6 | |
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grunge | 28.9 | |
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vintage | 26.5 | |
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wheeled vehicle | 26.2 | |
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texture | 22.2 | |
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art | 20.6 | |
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vehicle | 20.2 | |
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aged | 19.9 | |
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retro | 18.8 | |
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antique | 18.2 | |
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ancient | 18.2 | |
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black | 16.8 | |
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grungy | 16.1 | |
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dirty | 15.4 | |
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wall | 14.6 | |
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design | 14.1 | |
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text | 14 | |
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paint | 12.7 | |
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graphic | 12.4 | |
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pattern | 12.3 | |
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dark | 11.7 | |
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frame | 11.6 | |
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space | 11.6 | |
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empty | 11.2 | |
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grain | 11.1 | |
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wallpaper | 10.7 | |
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damaged | 10.5 | |
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paper | 10.2 | |
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structure | 10 | |
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city | 10 | |
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history | 9.8 | |
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textured | 9.6 | |
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artistic | 9.6 | |
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scene | 9.5 | |
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old fashioned | 9.5 | |
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culture | 9.4 | |
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historic | 9.2 | |
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rough | 9.1 | |
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border | 9 | |
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landscape | 8.9 | |
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decay | 8.7 | |
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building | 8.7 | |
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stain | 8.6 | |
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conveyance | 8.6 | |
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architecture | 8.6 | |
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worn | 8.6 | |
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weathered | 8.5 | |
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historical | 8.5 | |
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artwork | 8.2 | |
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transport | 8.2 | |
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backgrounds | 8.1 | |
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material | 8 | |
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urban | 7.9 | |
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grime | 7.8 | |
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fracture | 7.8 | |
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crumpled | 7.8 | |
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concrete | 7.7 | |
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rusty | 7.6 | |
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silhouette | 7.4 | |
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street | 7.4 | |
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letter | 7.3 | |
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transportation | 7.2 | |
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Google
created on 2022-03-11
Chair | 86.6 | |
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Font | 79.4 | |
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Crew | 72.6 | |
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Event | 71 | |
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Team | 70.2 | |
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Monochrome | 68 | |
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History | 67 | |
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Vintage clothing | 65.4 | |
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Room | 64.6 | |
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Suit | 64.1 | |
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Monochrome photography | 60 | |
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Sitting | 55 | |
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Hat | 54.8 | |
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Visual arts | 53.4 | |
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Collection | 53.1 | |
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Classic | 52.2 | |
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Personal protective equipment | 50.4 | |
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Color Analysis
Face analysis
Amazon

AWS Rekognition
Age | 27-37 |
Gender | Male, 98% |
Calm | 87% |
Happy | 12.6% |
Surprised | 0.1% |
Disgusted | 0.1% |
Confused | 0.1% |
Fear | 0.1% |
Sad | 0% |
Angry | 0% |

AWS Rekognition
Age | 24-34 |
Gender | Male, 83.2% |
Calm | 99.9% |
Sad | 0% |
Surprised | 0% |
Happy | 0% |
Disgusted | 0% |
Confused | 0% |
Angry | 0% |
Fear | 0% |

AWS Rekognition
Age | 37-45 |
Gender | Male, 98.1% |
Calm | 91.9% |
Happy | 4.6% |
Surprised | 1.5% |
Sad | 1.3% |
Fear | 0.3% |
Confused | 0.2% |
Disgusted | 0.1% |
Angry | 0.1% |

AWS Rekognition
Age | 23-33 |
Gender | Male, 97.3% |
Calm | 99% |
Happy | 0.4% |
Surprised | 0.3% |
Disgusted | 0.1% |
Angry | 0.1% |
Fear | 0.1% |
Sad | 0.1% |
Confused | 0% |

AWS Rekognition
Age | 20-28 |
Gender | Male, 98.8% |
Calm | 99.7% |
Fear | 0.2% |
Happy | 0.1% |
Disgusted | 0% |
Sad | 0% |
Confused | 0% |
Surprised | 0% |
Angry | 0% |

AWS Rekognition
Age | 43-51 |
Gender | Male, 71.6% |
Calm | 99.9% |
Surprised | 0% |
Sad | 0% |
Disgusted | 0% |
Happy | 0% |
Confused | 0% |
Angry | 0% |
Fear | 0% |

AWS Rekognition
Age | 29-39 |
Gender | Male, 93.4% |
Calm | 95.5% |
Sad | 2.2% |
Happy | 0.9% |
Surprised | 0.9% |
Confused | 0.3% |
Angry | 0.1% |
Disgusted | 0.1% |
Fear | 0.1% |

AWS Rekognition
Age | 33-41 |
Gender | Female, 57.6% |
Calm | 99.5% |
Happy | 0.3% |
Sad | 0.1% |
Angry | 0% |
Confused | 0% |
Surprised | 0% |
Disgusted | 0% |
Fear | 0% |

AWS Rekognition
Age | 29-39 |
Gender | Male, 97.8% |
Calm | 80.3% |
Happy | 10.1% |
Sad | 3.9% |
Confused | 1.5% |
Disgusted | 1.3% |
Angry | 1.1% |
Surprised | 1% |
Fear | 0.7% |

AWS Rekognition
Age | 28-38 |
Gender | Male, 96.7% |
Calm | 79.8% |
Happy | 18.5% |
Surprised | 1.2% |
Fear | 0.3% |
Disgusted | 0.1% |
Angry | 0.1% |
Confused | 0% |
Sad | 0% |

AWS Rekognition
Age | 16-22 |
Gender | Male, 99.9% |
Calm | 97% |
Happy | 1.5% |
Surprised | 0.9% |
Sad | 0.4% |
Angry | 0.1% |
Disgusted | 0.1% |
Confused | 0% |
Fear | 0% |

AWS Rekognition
Age | 31-41 |
Gender | Male, 99.1% |
Calm | 99.8% |
Happy | 0.1% |
Surprised | 0.1% |
Disgusted | 0% |
Fear | 0% |
Sad | 0% |
Angry | 0% |
Confused | 0% |

AWS Rekognition
Age | 30-40 |
Gender | Male, 99.3% |
Calm | 99.8% |
Surprised | 0.1% |
Happy | 0.1% |
Sad | 0% |
Angry | 0% |
Disgusted | 0% |
Confused | 0% |
Fear | 0% |

AWS Rekognition
Age | 28-38 |
Gender | Male, 77% |
Calm | 81.4% |
Happy | 16.6% |
Disgusted | 0.6% |
Sad | 0.5% |
Angry | 0.3% |
Surprised | 0.3% |
Confused | 0.2% |
Fear | 0.2% |

AWS Rekognition
Age | 28-38 |
Gender | Male, 99.7% |
Calm | 99.2% |
Surprised | 0.4% |
Sad | 0.2% |
Happy | 0.1% |
Angry | 0% |
Disgusted | 0% |
Confused | 0% |
Fear | 0% |
Feature analysis
Amazon
Person
Helmet
Categories
Imagga
paintings art | 74.8% | |
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text visuals | 10.1% | |
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streetview architecture | 7.2% | |
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nature landscape | 4.6% | |
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interior objects | 1.2% | |
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Captions
Microsoft
created on 2022-03-11
a group of people posing for a photo | 87.6% | |
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a group of people posing for a picture | 87.5% | |
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a group of people posing for the camera | 87.4% | |
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Text analysis
Amazon

IF

E

F

E IF E F E

'39

D

OLF

Shierday

VAGON YT A2-MAMTOA

VAGON

YT

A2-MAMTOA