Machine Generated Data
Tags
Amazon
created on 2022-01-09
Person | 99.1 | |
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Human | 99.1 | |
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Person | 98.9 | |
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Person | 98.8 | |
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Person | 98.7 | |
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Person | 98.4 | |
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Person | 98.4 | |
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Person | 98.2 | |
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Person | 97.4 | |
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Person | 96.9 | |
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Person | 96.2 | |
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Person | 94 | |
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Person | 93.3 | |
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Person | 83.8 | |
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Person | 81 | |
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Water | 80.3 | |
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Person | 78.8 | |
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Person | 76.2 | |
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Transportation | 75.8 | |
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Vehicle | 75.4 | |
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Person | 71.3 | |
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Person | 69.1 | |
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Person | 67 | |
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Waterfront | 66.2 | |
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Person | 64.9 | |
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People | 64 | |
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Person | 63 | |
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Person | 62.4 | |
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Pier | 62.1 | |
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Dock | 62.1 | |
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Port | 62.1 | |
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Person | 61.2 | |
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Building | 59.9 | |
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Railway | 58.3 | |
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Rail | 58.3 | |
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Train Track | 58.3 | |
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Road | 58.1 | |
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Person | 51.3 | |
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Person | 45.4 | |
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Clarifai
created on 2023-10-25
many | 99.8 | |
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people | 99.6 | |
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group | 99.2 | |
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group together | 97.7 | |
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vehicle | 95.6 | |
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crowd | 94.7 | |
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man | 94.5 | |
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adult | 93.2 | |
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railway | 90.9 | |
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no person | 90.3 | |
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watercraft | 89.8 | |
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home | 88.4 | |
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street | 88.4 | |
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transportation system | 87.3 | |
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outdoors | 87.1 | |
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monochrome | 86.9 | |
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cavalry | 86.7 | |
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spectator | 86.2 | |
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winter | 84.1 | |
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town | 83.7 | |
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Imagga
created on 2022-01-09
Google
created on 2022-01-09
Rolling stock | 86 | |
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Rectangle | 77.8 | |
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Font | 74.9 | |
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Building | 71.7 | |
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Monochrome | 65.2 | |
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History | 64.7 | |
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Stock photography | 64.4 | |
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Illustration | 64 | |
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Bridge | 62.5 | |
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Paper product | 60.5 | |
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Room | 59.7 | |
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Monochrome photography | 58 | |
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Facade | 58 | |
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Railway | 57.9 | |
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Art | 57 | |
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Painting | 55.5 | |
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Visual arts | 53.9 | |
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Metal | 53.6 | |
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Picture frame | 51.2 | |
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Microsoft
created on 2022-01-09
text | 99.9 | |
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white | 66.2 | |
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black and white | 52.4 | |
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old | 44.3 | |
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Color Analysis
Feature analysis
Amazon
![](https://ids.lib.harvard.edu/ids/iiif/18792386/660,477,52,148/full/0/native.jpg)
![](https://ids.lib.harvard.edu/ids/iiif/18792386/31,549,79,194/full/0/native.jpg)
![](https://ids.lib.harvard.edu/ids/iiif/18792386/877,494,44,138/full/0/native.jpg)
![](https://ids.lib.harvard.edu/ids/iiif/18792386/106,574,63,176/full/0/native.jpg)
![](https://ids.lib.harvard.edu/ids/iiif/18792386/756,497,35,133/full/0/native.jpg)
![](https://ids.lib.harvard.edu/ids/iiif/18792386/575,475,40,127/full/0/native.jpg)
![](https://ids.lib.harvard.edu/ids/iiif/18792386/371,448,31,115/full/0/native.jpg)
![](https://ids.lib.harvard.edu/ids/iiif/18792386/563,700,73,91/full/0/native.jpg)
![](https://ids.lib.harvard.edu/ids/iiif/18792386/486,464,35,125/full/0/native.jpg)
![](https://ids.lib.harvard.edu/ids/iiif/18792386/251,450,26,92/full/0/native.jpg)
![](https://ids.lib.harvard.edu/ids/iiif/18792386/313,447,30,106/full/0/native.jpg)
![](https://ids.lib.harvard.edu/ids/iiif/18792386/239,352,16,50/full/0/native.jpg)
![](https://ids.lib.harvard.edu/ids/iiif/18792386/93,420,24,88/full/0/native.jpg)
![](https://ids.lib.harvard.edu/ids/iiif/18792386/297,683,53,104/full/0/native.jpg)
![](https://ids.lib.harvard.edu/ids/iiif/18792386/514,649,69,127/full/0/native.jpg)
![](https://ids.lib.harvard.edu/ids/iiif/18792386/206,728,64,65/full/0/native.jpg)
![](https://ids.lib.harvard.edu/ids/iiif/18792386/611,352,16,42/full/0/native.jpg)
![](https://ids.lib.harvard.edu/ids/iiif/18792386/126,419,26,97/full/0/native.jpg)
![](https://ids.lib.harvard.edu/ids/iiif/18792386/542,343,15,47/full/0/native.jpg)
![](https://ids.lib.harvard.edu/ids/iiif/18792386/520,640,58,78/full/0/native.jpg)
![](https://ids.lib.harvard.edu/ids/iiif/18792386/317,438,24,70/full/0/native.jpg)
![](https://ids.lib.harvard.edu/ids/iiif/18792386/577,350,13,42/full/0/native.jpg)
![](https://ids.lib.harvard.edu/ids/iiif/18792386/421,426,19,66/full/0/native.jpg)
![](https://ids.lib.harvard.edu/ids/iiif/18792386/53,411,25,86/full/0/native.jpg)
![](https://ids.lib.harvard.edu/ids/iiif/18792386/213,436,27,94/full/0/native.jpg)
Person | 99.1% | |
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Categories
Imagga
cars vehicles | 61.5% | |
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nature landscape | 19.8% | |
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beaches seaside | 9.6% | |
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streetview architecture | 4.4% | |
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text visuals | 3.4% | |
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Captions
Microsoft
created on 2022-01-09
a vintage photo of a large crowd of people | 92% | |
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a vintage photo of a group of people standing in front of a crowd | 86.2% | |
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a vintage photo of a crowd | 86.1% | |
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Text analysis
Amazon
![](https://ids.lib.harvard.edu/ids/iiif/18792386/100,785,197,33/full/0/native.jpg)
25082.
![](https://ids.lib.harvard.edu/ids/iiif/18792386/620,325,72,18/full/0/native.jpg)
======
![](https://ids.lib.harvard.edu/ids/iiif/18792386/96,325,755,496/full/0/native.jpg)
====== ==
====== ==
====
25082.
25082.
![](https://ids.lib.harvard.edu/ids/iiif/18792386/703,326,13,16/full/0/native.jpg)
==
![](https://ids.lib.harvard.edu/ids/iiif/18792386/488,330,43,11/full/0/native.jpg)
====
![](https://ids.lib.harvard.edu/ids/iiif/18792386/96,788,212,33/full/0/native.jpg)
25082.