Machine Generated Data
Tags
Amazon
created on 2023-07-18
Machine | 99.2 | |
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Spoke | 99.2 | |
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Adult | 98.7 | |
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Male | 98.7 | |
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Man | 98.7 | |
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Person | 98.7 | |
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Adult | 97.9 | |
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Male | 97.9 | |
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Man | 97.9 | |
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Person | 97.9 | |
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People | 96.4 | |
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Wheel | 95.9 | |
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Person | 94.3 | |
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Car | 93.5 | |
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Transportation | 93.5 | |
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Vehicle | 93.5 | |
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Wheel | 93.2 | |
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Male | 91.5 | |
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Person | 91.5 | |
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Boy | 91.5 | |
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Child | 91.5 | |
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Bicycle | 90.5 | |
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Person | 89.6 | |
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Person | 88.3 | |
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Person | 88.2 | |
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Person | 83.7 | |
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Cycling | 83 | |
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Sport | 83 | |
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Person | 82.8 | |
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Wheel | 82.4 | |
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Person | 82.2 | |
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Person | 81.9 | |
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Wheel | 81.8 | |
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Person | 80.8 | |
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Person | 79.9 | |
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Person | 79.5 | |
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Person | 79.1 | |
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Person | 78.9 | |
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Bus | 77.3 | |
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Person | 77.2 | |
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Person | 75.2 | |
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Person | 74.8 | |
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Person | 70.9 | |
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Person | 69 | |
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Text | 66.6 | |
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Head | 65.2 | |
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Wheel | 65.2 | |
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Person | 64.7 | |
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Person | 64.4 | |
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Person | 63.9 | |
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Alloy Wheel | 63.1 | |
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Car Wheel | 63.1 | |
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Tire | 63.1 | |
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Person | 62.5 | |
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Person | 61.4 | |
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Person | 60.8 | |
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Advertisement | 57.2 | |
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Poster | 57.1 | |
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Tricycle | 56.4 | |
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Furniture | 56.1 | |
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Carriage | 55.7 | |
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Motorcycle | 55.2 | |
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Arch | 55.1 | |
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Architecture | 55.1 | |
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Clarifai
created on 2023-10-13
Imagga
created on 2023-07-18
sketch | 52.4 | |
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drawing | 40.9 | |
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representation | 31.6 | |
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architecture | 26.5 | |
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building | 20 | |
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window | 17.6 | |
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house | 16.8 | |
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old | 16.7 | |
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vintage | 16.5 | |
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antique | 15.8 | |
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design | 15.7 | |
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wall | 14.7 | |
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decoration | 14.6 | |
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facade | 13.9 | |
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art | 13.9 | |
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home | 13.7 | |
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frame | 13.3 | |
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decor | 13.3 | |
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ancient | 13 | |
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money | 12.8 | |
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currency | 12.6 | |
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paper | 12.5 | |
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history | 12.5 | |
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retro | 12.3 | |
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style | 11.9 | |
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interior | 11.5 | |
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room | 11.4 | |
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travel | 11.3 | |
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bank | 10.9 | |
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structure | 10.8 | |
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landmark | 10.8 | |
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city | 10.8 | |
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historical | 10.3 | |
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monument | 10.3 | |
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sculpture | 10.1 | |
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finance | 10.1 | |
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furniture | 10.1 | |
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tourism | 9.9 | |
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door | 9.9 | |
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religion | 9.9 | |
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pattern | 9.6 | |
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bill | 9.5 | |
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glass | 9.3 | |
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famous | 9.3 | |
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decorative | 9.2 | |
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historic | 9.2 | |
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ornate | 9.1 | |
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pay | 8.6 | |
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ornament | 8.6 | |
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hotel | 8.6 | |
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luxury | 8.6 | |
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grunge | 8.5 | |
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marble | 8.5 | |
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texture | 8.3 | |
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element | 8.3 | |
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arch | 8 | |
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business | 7.9 | |
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culture | 7.7 | |
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destination | 7.5 | |
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rich | 7.4 | |
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dollar | 7.4 | |
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framework | 7.4 | |
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object | 7.3 | |
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cash | 7.3 | |
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tile | 7.3 | |
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success | 7.2 | |
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balcony | 7.1 | |
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Google
created on 2023-07-18
Wheel | 97.8 | |
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Tire | 96.9 | |
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Motor vehicle | 89.9 | |
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Vehicle | 89.2 | |
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Bicycle tire | 87.2 | |
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Bicycle | 86.2 | |
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Bicycle wheel rim | 84.5 | |
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Automotive tire | 78.8 | |
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Font | 77.9 | |
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Classic | 75 | |
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Building | 74.7 | |
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Poster | 72.5 | |
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Automotive wheel system | 67.9 | |
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Advertising | 67.1 | |
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Classic car | 66.7 | |
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Bicycle wheel | 62.8 | |
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History | 62.2 | |
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Automotive lighting | 61.3 | |
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Arch | 60.9 | |
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Vintage advertisement | 60.5 | |
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Microsoft
created on 2023-07-18
text | 100 | |
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bicycle | 94 | |
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vehicle | 89.5 | |
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land vehicle | 88.9 | |
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wheel | 87.2 | |
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Color Analysis
Face analysis
Amazon

AWS Rekognition
Age | 12-20 |
Gender | Male, 99.2% |
Angry | 43.5% |
Fear | 24% |
Surprised | 18.8% |
Happy | 5.7% |
Sad | 4.7% |
Calm | 2.8% |
Confused | 1.9% |
Disgusted | 1.8% |

AWS Rekognition
Age | 23-31 |
Gender | Female, 54.4% |
Calm | 82.9% |
Happy | 7.9% |
Surprised | 6.5% |
Fear | 6.3% |
Sad | 3.1% |
Disgusted | 2.7% |
Angry | 1.8% |
Confused | 0.4% |

AWS Rekognition
Age | 12-20 |
Gender | Female, 90.4% |
Sad | 95.9% |
Angry | 26.7% |
Disgusted | 12% |
Fear | 8.7% |
Surprised | 7% |
Calm | 2.3% |
Confused | 1.5% |
Happy | 1.1% |

AWS Rekognition
Age | 12-20 |
Gender | Male, 99.1% |
Calm | 93.3% |
Surprised | 6.5% |
Fear | 6% |
Sad | 2.8% |
Angry | 1.7% |
Happy | 1% |
Confused | 0.8% |
Disgusted | 0.5% |

AWS Rekognition
Age | 36-44 |
Gender | Male, 99.3% |
Calm | 89.7% |
Surprised | 10.3% |
Fear | 6% |
Sad | 2.5% |
Happy | 1.6% |
Disgusted | 0.5% |
Confused | 0.3% |
Angry | 0.2% |

AWS Rekognition
Age | 13-21 |
Gender | Female, 98.8% |
Happy | 75.7% |
Surprised | 10.2% |
Fear | 7% |
Sad | 4.9% |
Calm | 4.7% |
Angry | 2.9% |
Disgusted | 1.1% |
Confused | 0.6% |

AWS Rekognition
Age | 16-24 |
Gender | Male, 91.9% |
Happy | 29% |
Calm | 27.9% |
Angry | 12% |
Sad | 10.8% |
Fear | 9.2% |
Surprised | 8.1% |
Confused | 6.1% |
Disgusted | 2.6% |

AWS Rekognition
Age | 14-22 |
Gender | Male, 91.2% |
Calm | 91.4% |
Surprised | 7% |
Fear | 6.4% |
Sad | 3.5% |
Angry | 1.3% |
Happy | 0.4% |
Disgusted | 0.4% |
Confused | 0.4% |

AWS Rekognition
Age | 12-20 |
Gender | Female, 69.6% |
Sad | 100% |
Fear | 7.5% |
Surprised | 7.2% |
Angry | 2.7% |
Calm | 1.1% |
Disgusted | 0.9% |
Happy | 0.7% |
Confused | 0.6% |

AWS Rekognition
Age | 23-31 |
Gender | Male, 76.3% |
Surprised | 46.5% |
Calm | 22.3% |
Fear | 16.6% |
Sad | 13.1% |
Angry | 12.3% |
Disgusted | 2.3% |
Happy | 1.7% |
Confused | 0.9% |

AWS Rekognition
Age | 27-37 |
Gender | Male, 72.5% |
Calm | 49% |
Happy | 43.7% |
Surprised | 7.8% |
Fear | 6.1% |
Sad | 2.6% |
Angry | 1% |
Disgusted | 0.8% |
Confused | 0.6% |

AWS Rekognition
Age | 14-22 |
Gender | Female, 99.9% |
Calm | 98.5% |
Surprised | 6.4% |
Fear | 5.9% |
Sad | 2.2% |
Angry | 0.3% |
Happy | 0.2% |
Disgusted | 0.1% |
Confused | 0.1% |

AWS Rekognition
Age | 10-18 |
Gender | Female, 90.9% |
Calm | 72.7% |
Angry | 13.2% |
Fear | 7.5% |
Surprised | 7.1% |
Sad | 4.1% |
Happy | 1.8% |
Disgusted | 1.6% |
Confused | 0.5% |

AWS Rekognition
Age | 18-26 |
Gender | Female, 59.9% |
Sad | 65.6% |
Calm | 53.3% |
Surprised | 7.3% |
Fear | 6.7% |
Angry | 6.4% |
Disgusted | 2.2% |
Confused | 1.9% |
Happy | 1% |

AWS Rekognition
Age | 25-35 |
Gender | Male, 83.1% |
Calm | 82.3% |
Surprised | 7.6% |
Fear | 6.3% |
Sad | 5.3% |
Happy | 2.8% |
Confused | 2.4% |
Angry | 1.4% |
Disgusted | 1.1% |

AWS Rekognition
Age | 18-26 |
Gender | Female, 99.3% |
Fear | 97.8% |
Surprised | 6.4% |
Sad | 2.2% |
Calm | 0.9% |
Angry | 0.2% |
Disgusted | 0.2% |
Happy | 0.1% |
Confused | 0% |

AWS Rekognition
Age | 16-22 |
Gender | Male, 94.3% |
Calm | 98.5% |
Surprised | 6.3% |
Fear | 5.9% |
Sad | 2.2% |
Happy | 1% |
Disgusted | 0.1% |
Angry | 0.1% |
Confused | 0% |

AWS Rekognition
Age | 29-39 |
Gender | Female, 67.5% |
Calm | 80.4% |
Happy | 10.8% |
Surprised | 6.7% |
Fear | 6.6% |
Sad | 3.7% |
Angry | 1.4% |
Disgusted | 0.5% |
Confused | 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 | Unlikely |
Headwear | Very unlikely |
Blurred | Very unlikely |
Feature analysis
Amazon

Adult | 98.7% | |
|

Adult | 97.9% | |
|

Male | 98.7% | |
|

Male | 97.9% | |
|

Male | 91.5% | |
|

Man | 98.7% | |
|

Man | 97.9% | |
|

Person | 98.7% | |
|

Person | 97.9% | |
|

Person | 94.3% | |
|

Person | 91.5% | |
|

Person | 89.6% | |
|

Person | 88.3% | |
|

Person | 88.2% | |
|

Person | 83.7% | |
|

Person | 82.8% | |
|

Person | 82.2% | |
|

Person | 81.9% | |
|

Person | 80.8% | |
|

Person | 79.9% | |
|

Person | 79.5% | |
|

Person | 79.1% | |
|

Person | 78.9% | |
|

Person | 77.2% | |
|

Person | 75.2% | |
|

Person | 74.8% | |
|

Person | 70.9% | |
|

Person | 69% | |
|

Person | 64.7% | |
|

Person | 64.4% | |
|

Person | 63.9% | |
|

Person | 62.5% | |
|

Person | 61.4% | |
|

Person | 60.8% | |
|

Wheel | 95.9% | |
|

Wheel | 93.2% | |
|

Wheel | 82.4% | |
|

Wheel | 81.8% | |
|

Wheel | 65.2% | |
|

Car | 93.5% | |
|

Boy | 91.5% | |
|

Child | 91.5% | |
|

Bicycle | 90.5% | |
|

Bus | 77.3% | |
|
Categories
Imagga
interior objects | 74.1% | |
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paintings art | 15.7% | |
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streetview architecture | 8.9% | |
|
Captions
Microsoft
created on 2023-07-18
a vintage photo of a person | 65.5% | |
| ||
a vintage photo of a truck | 32.9% | |
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a vintage photo of some people | 32.8% | |
|
Anthropic Claude
Created by claude-3-haiku-20240307 on 2025-01-01
The image depicts a scene from the colonial history of Cambodia. It shows a group of soldiers and civilians riding on buses and bicycles through the streets of Phnom Penh, the capital city. The buildings in the background appear to be historic structures, with ornate architecture typical of the region. The text below the image provides additional context, explaining that the scene captures the passage of history and the different modes of transport used by the people during Cambodia's colonial era. The image provides a visual snapshot of this period in Cambodia's past.
Created by claude-3-5-sonnet-20241022 on 2025-01-01
This is a historical black and white photograph from 1971 in Phnom Penh, Cambodia. The image shows a striking contrast between different modes of transportation in front of the Roman Catholic Basilica, which features distinctive twin towers and Gothic-style architecture. In the foreground, there's a traditional cyclo (three-wheeled bicycle taxi) in motion. Behind it, there's a bus loaded with troops sitting both inside and on top of the vehicle, returning from a military road-clearing operation. The background is dominated by the white facade of the basilica, which stands as a reminder of Cambodia's French colonial history. The image caption notes this as a "passage of history," capturing a moment where traditional and military transport methods coexist during a turbulent period in Cambodia's history.
Text analysis
Amazon
































































































































