Machine Generated Data
Tags
Amazon
created on 2023-10-06
City | 100 | |
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Road | 100 | |
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Street | 100 | |
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Urban | 100 | |
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Neighborhood | 97.5 | |
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Machine | 95.3 | |
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Wheel | 95.3 | |
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Wheel | 94.9 | |
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Wheel | 93.5 | |
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Car | 93.1 | |
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Transportation | 93.1 | |
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Vehicle | 93.1 | |
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Car | 86.6 | |
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Wheel | 86.4 | |
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Wheel | 85.4 | |
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Wheel | 85.4 | |
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Wheel | 84.8 | |
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Car | 77.2 | |
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Car | 70.8 | |
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Antique Car | 65.9 | |
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Model T | 65.9 | |
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Wheel | 65.2 | |
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Fire Hydrant | 62.8 | |
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Hydrant | 62.8 | |
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Van | 57.5 | |
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Balloon | 56.6 | |
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Tarmac | 56.4 | |
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Caravan | 55.5 | |
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Architecture | 55.2 | |
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Building | 55.2 | |
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Office Building | 55.2 | |
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Path | 55 | |
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Clarifai
created on 2018-05-11
vehicle | 99.8 | |
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street | 99.5 | |
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transportation system | 99.3 | |
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people | 99.2 | |
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group | 97.3 | |
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group together | 97.3 | |
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road | 95.4 | |
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tram | 95.2 | |
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car | 94.2 | |
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many | 91.7 | |
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city | 89.7 | |
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no person | 87.8 | |
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police | 87.7 | |
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truck | 87.3 | |
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monochrome | 87.3 | |
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administration | 83.5 | |
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bus | 82.8 | |
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driver | 82.3 | |
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two | 80.8 | |
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town | 80.2 | |
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Imagga
created on 2023-10-06
machine | 76.8 | |
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motor vehicle | 55.9 | |
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device | 52.5 | |
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car | 40.3 | |
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road | 38.9 | |
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truck | 37.6 | |
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amphibian | 35.9 | |
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city | 33.3 | |
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street | 33.1 | |
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vehicle | 31.7 | |
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wheeled vehicle | 28.4 | |
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travel | 26.8 | |
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transportation | 25.1 | |
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architecture | 22.7 | |
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urban | 20.1 | |
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building | 19.9 | |
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sky | 18.5 | |
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transport | 18.3 | |
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tourism | 17.3 | |
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garbage truck | 17 | |
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old | 16.7 | |
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model t | 15.4 | |
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drive | 14.2 | |
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town | 13.9 | |
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traffic | 13.3 | |
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bus | 12.6 | |
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cars | 11.7 | |
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house | 11.7 | |
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cityscape | 11.4 | |
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buildings | 11.3 | |
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historic | 11 | |
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water | 10.7 | |
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river | 10.7 | |
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driving | 10.6 | |
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automobile | 10.5 | |
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vacation | 9.8 | |
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auto | 9.6 | |
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day | 9.4 | |
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minibus | 8.9 | |
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scenic | 8.8 | |
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highway | 8.7 | |
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scene | 8.7 | |
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trip | 8.5 | |
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tourist | 8.2 | |
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trees | 8 | |
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ancient | 7.8 | |
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cargo | 7.8 | |
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industry | 7.7 | |
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outdoor | 7.6 | |
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bridge | 7.6 | |
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landscape | 7.4 | |
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light | 7.4 | |
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speed | 7.3 | |
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industrial | 7.3 | |
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people | 7.3 | |
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square | 7.2 | |
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equipment | 7.1 | |
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Google
created on 2018-05-11
motor vehicle | 98 | |
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car | 97.5 | |
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transport | 95.6 | |
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vehicle | 92.9 | |
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black and white | 89.5 | |
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mode of transport | 87.5 | |
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monochrome photography | 74.1 | |
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family car | 63.5 | |
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automotive exterior | 61.1 | |
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vintage car | 59.1 | |
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monochrome | 58.5 | |
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street | 56.8 | |
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classic | 52.4 | |
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compact car | 51.9 | |
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Color Analysis
Feature analysis
Amazon
Categories
Imagga
cars vehicles | 80.3% | |
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streetview architecture | 13.5% | |
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paintings art | 3.7% | |
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nature landscape | 1.4% | |
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Captions
Microsoft
created on 2018-05-11
a black and white photo of a truck | 95% | |
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a white truck driving down a street | 94.9% | |
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a truck that is driving down the street | 94.7% | |
|
Text analysis
Amazon
![](https://ids.lib.harvard.edu/ids/iiif/43158501/561,345,56,34/full/0/native.jpg)
BIRTH
![](https://ids.lib.harvard.edu/ids/iiif/43158501/645,349,46,32/full/0/native.jpg)
BABY
![](https://ids.lib.harvard.edu/ids/iiif/43158501/636,395,17,11/full/0/native.jpg)
THE
![](https://ids.lib.harvard.edu/ids/iiif/43158501/590,380,33,13/full/0/native.jpg)
MOST
![](https://ids.lib.harvard.edu/ids/iiif/43158501/555,305,49,17/full/0/native.jpg)
GRAND
![](https://ids.lib.harvard.edu/ids/iiif/43158501/573,392,42,13/full/0/native.jpg)
PICTURE
![](https://ids.lib.harvard.edu/ids/iiif/43158501/767,277,22,8/full/0/native.jpg)
CREAM
![](https://ids.lib.harvard.edu/ids/iiif/43158501/640,326,19,13/full/0/native.jpg)
JULY
![](https://ids.lib.harvard.edu/ids/iiif/43158501/619,394,13,12/full/0/native.jpg)
OF
![](https://ids.lib.harvard.edu/ids/iiif/43158501/573,392,117,15/full/0/native.jpg)
PICTURE OF THE YEAR
![](https://ids.lib.harvard.edu/ids/iiif/43158501/613,310,60,20/full/0/native.jpg)
THEATRE
![](https://ids.lib.harvard.edu/ids/iiif/43158501/561,378,135,17/full/0/native.jpg)
THE MOST TALKED ABOUT
![](https://ids.lib.harvard.edu/ids/iiif/43158501/754,277,35,8/full/0/native.jpg)
ICE CREAM
![](https://ids.lib.harvard.edu/ids/iiif/43158501/242,297,34,10/full/0/native.jpg)
CUSSINS
![](https://ids.lib.harvard.edu/ids/iiif/43158501/754,278,12,7/full/0/native.jpg)
ICE
![](https://ids.lib.harvard.edu/ids/iiif/43158501/667,382,29,13/full/0/native.jpg)
ABOUT
![](https://ids.lib.harvard.edu/ids/iiif/43158501/629,382,35,11/full/0/native.jpg)
TALKED
![](https://ids.lib.harvard.edu/ids/iiif/43158501/660,395,30,12/full/0/native.jpg)
YEAR
![](https://ids.lib.harvard.edu/ids/iiif/43158501/67,275,32,10/full/0/native.jpg)
SODAS
![](https://ids.lib.harvard.edu/ids/iiif/43158501/629,363,11,13/full/0/native.jpg)
A
![](https://ids.lib.harvard.edu/ids/iiif/43158501/245,309,26,8/full/0/native.jpg)
FEARN
![](https://ids.lib.harvard.edu/ids/iiif/43158501/561,345,132,38/full/0/native.jpg)
BIRTH OE A BABY
![](https://ids.lib.harvard.edu/ids/iiif/43158501/753,270,35,8/full/0/native.jpg)
RMONTS
![](https://ids.lib.harvard.edu/ids/iiif/43158501/547,319,155,25/full/0/native.jpg)
SUN-MON-TUES-WED JULY
![](https://ids.lib.harvard.edu/ids/iiif/43158501/555,305,155,27/full/0/native.jpg)
GRAND THEATRE ORANGE
![](https://ids.lib.harvard.edu/ids/iiif/43158501/547,319,89,21/full/0/native.jpg)
SUN-MON-TUES-WED
![](https://ids.lib.harvard.edu/ids/iiif/43158501/619,352,15,13/full/0/native.jpg)
OE
![](https://ids.lib.harvard.edu/ids/iiif/43158501/547,339,13,13/full/0/native.jpg)
he
![](https://ids.lib.harvard.edu/ids/iiif/43158501/74,284,16,5/full/0/native.jpg)
SMART
![](https://ids.lib.harvard.edu/ids/iiif/43158501/674,317,36,15/full/0/native.jpg)
ORANGE
![](https://ids.lib.harvard.edu/ids/iiif/43158501/242,278,552,123/full/0/native.jpg)
E CREAN
CUSSIN
THE MEST TALKED ABGUT
![](https://ids.lib.harvard.edu/ids/iiif/43158501/762,278,7,11/full/0/native.jpg)
E
![](https://ids.lib.harvard.edu/ids/iiif/43158501/768,278,26,11/full/0/native.jpg)
CREAN
![](https://ids.lib.harvard.edu/ids/iiif/43158501/242,298,32,14/full/0/native.jpg)
CUSSIN
![](https://ids.lib.harvard.edu/ids/iiif/43158501/564,379,23,17/full/0/native.jpg)
THE
![](https://ids.lib.harvard.edu/ids/iiif/43158501/589,380,36,17/full/0/native.jpg)
MEST
![](https://ids.lib.harvard.edu/ids/iiif/43158501/629,382,39,17/full/0/native.jpg)
TALKED
![](https://ids.lib.harvard.edu/ids/iiif/43158501/669,384,30,17/full/0/native.jpg)
ABGUT