Machine Generated Data
Tags
Amazon
created on 2022-03-19
Person | 99.2 | |
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Human | 99.2 | |
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Horse | 96.3 | |
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Animal | 96.3 | |
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Mammal | 96.3 | |
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Person | 95 | |
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Bike | 94.9 | |
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Vehicle | 94.9 | |
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Transportation | 94.9 | |
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Person | 93.9 | |
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Wheel | 93.7 | |
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Machine | 93.7 | |
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Wheel | 92.8 | |
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Person | 91.2 | |
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Cyclist | 88.2 | |
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Sport | 88.2 | |
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Sports | 88.2 | |
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Person | 88.2 | |
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Person | 81.8 | |
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Person | 71.3 | |
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Pedestrian | 69.1 | |
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Person | 67.6 | |
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Bicycle | 66.4 | |
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Person | 65.5 | |
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Person | 61.9 | |
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Person | 60.4 | |
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Metropolis | 57.6 | |
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Building | 57.6 | |
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Urban | 57.6 | |
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City | 57.6 | |
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Town | 57.6 | |
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Spoke | 56.2 | |
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Person | 42.2 | |
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Clarifai
created on 2023-10-29
Imagga
created on 2022-03-19
carriage | 80 | |
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horse cart | 37.1 | |
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cart | 34.2 | |
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street | 24.9 | |
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city | 24.1 | |
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wagon | 23.7 | |
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architecture | 22 | |
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building | 21.1 | |
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travel | 20.4 | |
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wheeled vehicle | 18.2 | |
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old | 18.1 | |
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transportation | 17.9 | |
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snow | 17.3 | |
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road | 17.2 | |
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vehicle | 14.6 | |
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sky | 12.8 | |
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tourism | 12.4 | |
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urban | 12.2 | |
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graffito | 12.1 | |
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outdoors | 11.9 | |
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house | 11.7 | |
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trees | 11.6 | |
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ancient | 11.2 | |
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tourist | 10.9 | |
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tree | 10.8 | |
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outdoor | 9.9 | |
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support | 9.6 | |
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horse | 9.5 | |
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people | 9.5 | |
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wheelchair | 9.4 | |
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stone | 9.3 | |
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town | 9.3 | |
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chair | 9.2 | |
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transport | 9.1 | |
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park | 9.1 | |
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landscape | 8.9 | |
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bicycle | 8.9 | |
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antique | 8.7 | |
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structure | 8.6 | |
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wheel | 8.5 | |
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monument | 8.4 | |
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summer | 8.4 | |
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historic | 8.3 | |
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vacation | 8.2 | |
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aged | 8.1 | |
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wall | 8.1 | |
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seat | 8.1 | |
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man | 8.1 | |
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decoration | 7.8 | |
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color | 7.8 | |
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ride | 7.8 | |
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outside | 7.7 | |
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construction | 7.7 | |
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culture | 7.7 | |
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brick | 7.5 | |
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vintage | 7.4 | |
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exterior | 7.4 | |
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landmark | 7.2 | |
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activity | 7.2 | |
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history | 7.2 | |
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Google
created on 2022-03-19
Wheel | 96.5 | |
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Window | 93.6 | |
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Building | 93.1 | |
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White | 92.2 | |
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Black | 89.6 | |
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Vehicle | 88.7 | |
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Black-and-white | 85.9 | |
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Tire | 85.1 | |
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Motor vehicle | 84.9 | |
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Style | 84 | |
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Cart | 75.4 | |
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Road | 74.6 | |
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Monochrome photography | 74.4 | |
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Crowd | 73.7 | |
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City | 73.4 | |
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Monochrome | 73 | |
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Font | 73 | |
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Event | 70.6 | |
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Street | 69.7 | |
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Pedestrian | 66.2 | |
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Color Analysis
Face analysis
Amazon

AWS Rekognition
Age | 16-22 |
Gender | Male, 79.1% |
Calm | 58.1% |
Happy | 14% |
Surprised | 10.1% |
Sad | 6.8% |
Disgusted | 5.2% |
Confused | 2.8% |
Angry | 2.2% |
Fear | 0.9% |

AWS Rekognition
Age | 18-24 |
Gender | Male, 98.6% |
Calm | 79.9% |
Happy | 9.7% |
Surprised | 7.1% |
Angry | 1.3% |
Sad | 1.1% |
Disgusted | 0.5% |
Fear | 0.2% |
Confused | 0.2% |

AWS Rekognition
Age | 21-29 |
Gender | Male, 100% |
Surprised | 33.1% |
Calm | 30.7% |
Angry | 11.1% |
Happy | 8.1% |
Sad | 5.9% |
Confused | 5.5% |
Disgusted | 4% |
Fear | 1.5% |

AWS Rekognition
Age | 6-14 |
Gender | Female, 100% |
Fear | 87% |
Sad | 7.5% |
Calm | 2.2% |
Happy | 1.5% |
Angry | 0.7% |
Confused | 0.4% |
Surprised | 0.4% |
Disgusted | 0.3% |

AWS Rekognition
Age | 30-40 |
Gender | Female, 77.5% |
Calm | 45.7% |
Angry | 33.1% |
Sad | 12.4% |
Disgusted | 5.2% |
Happy | 2.1% |
Fear | 0.6% |
Confused | 0.5% |
Surprised | 0.3% |

AWS Rekognition
Age | 6-14 |
Gender | Male, 86% |
Disgusted | 63.7% |
Sad | 11.3% |
Confused | 6.7% |
Calm | 6.5% |
Happy | 3.5% |
Surprised | 3.3% |
Fear | 3.1% |
Angry | 1.9% |

AWS Rekognition
Age | 23-31 |
Gender | Female, 82.6% |
Confused | 44% |
Sad | 16.3% |
Angry | 12% |
Calm | 11.9% |
Surprised | 6.9% |
Disgusted | 5.6% |
Happy | 1.6% |
Fear | 1.5% |

AWS Rekognition
Age | 38-46 |
Gender | Male, 95.8% |
Sad | 65.9% |
Fear | 11.9% |
Calm | 7.3% |
Confused | 6.8% |
Surprised | 2.3% |
Disgusted | 2.2% |
Happy | 1.8% |
Angry | 1.7% |

AWS Rekognition
Age | 33-41 |
Gender | Female, 68.7% |
Calm | 52% |
Disgusted | 25.3% |
Sad | 9.6% |
Angry | 6.2% |
Confused | 4.2% |
Surprised | 1.5% |
Happy | 0.6% |
Fear | 0.6% |

AWS Rekognition
Age | 23-31 |
Gender | Male, 80.2% |
Calm | 43.7% |
Sad | 36.6% |
Confused | 9.1% |
Angry | 6.1% |
Surprised | 2% |
Fear | 0.9% |
Disgusted | 0.9% |
Happy | 0.7% |

AWS Rekognition
Age | 34-42 |
Gender | Male, 97.4% |
Happy | 63.4% |
Calm | 14.4% |
Sad | 9.1% |
Surprised | 3.8% |
Angry | 3.4% |
Disgusted | 2.5% |
Confused | 2.4% |
Fear | 0.9% |

AWS Rekognition
Age | 16-22 |
Gender | Female, 70.7% |
Calm | 72.2% |
Angry | 8.5% |
Sad | 7.8% |
Confused | 5.2% |
Disgusted | 3.8% |
Happy | 1.3% |
Fear | 0.6% |
Surprised | 0.6% |

AWS Rekognition
Age | 19-27 |
Gender | Male, 95.3% |
Disgusted | 33.9% |
Angry | 24.7% |
Happy | 11.9% |
Calm | 8.8% |
Fear | 7.7% |
Sad | 7.1% |
Surprised | 4.4% |
Confused | 1.5% |

AWS Rekognition
Age | 31-41 |
Gender | Male, 98.3% |
Calm | 89.4% |
Happy | 6.3% |
Confused | 1.5% |
Angry | 1.1% |
Sad | 0.8% |
Surprised | 0.6% |
Disgusted | 0.2% |
Fear | 0.1% |

AWS Rekognition
Age | 23-33 |
Gender | Male, 77.9% |
Happy | 50.7% |
Calm | 34.5% |
Surprised | 6.3% |
Angry | 6% |
Disgusted | 1.3% |
Sad | 0.5% |
Confused | 0.3% |
Fear | 0.3% |

Google Vision
Surprise | Very unlikely |
Anger | Very unlikely |
Sorrow | Very unlikely |
Joy | Very unlikely |
Headwear | Very unlikely |
Blurred | Very unlikely |

Google Vision
Surprise | Very unlikely |
Anger | Very unlikely |
Sorrow | Very unlikely |
Joy | Very unlikely |
Headwear | Very unlikely |
Blurred | Very unlikely |

Google Vision
Surprise | Very unlikely |
Anger | Very unlikely |
Sorrow | Very unlikely |
Joy | Very unlikely |
Headwear | Very unlikely |
Blurred | Very unlikely |
Feature analysis
Categories
Imagga
streetview architecture | 99.9% | |
|
Captions
Microsoft
created on 2022-03-19
Text analysis
Amazon

ED

Antiques

ED KRUSE

NK

KRUSE

Lomas

Las Lomas

NATIONAL

Las

FIRST

be

be Buses

Buses

ED KRUSE
Las Lomas
Antiques

ED

KRUSE

Las

Lomas

Antiques