Machine Generated Data
Tags
Amazon
created on 2019-06-17
Clarifai
created on 2019-06-17
modern | 93.2 | |
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business | 92 | |
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city | 88.4 | |
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street | 86.6 | |
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desktop | 84.9 | |
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people | 84.7 | |
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monochrome | 84.2 | |
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vehicle | 84 | |
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no person | 83.1 | |
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picture frame | 82.6 | |
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technology | 82.6 | |
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empty | 82.3 | |
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illustration | 81.4 | |
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blank | 80.8 | |
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design | 80.8 | |
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commercial | 80.5 | |
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office | 80 | |
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display | 79.8 | |
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screen | 79.1 | |
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architecture | 78.8 | |
|
Imagga
created on 2019-06-17
Google
created on 2019-06-17
White | 96.5 | |
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Photograph | 96.3 | |
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Black | 95.7 | |
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Black-and-white | 92.4 | |
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Snapshot | 86.5 | |
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Photographic paper | 83 | |
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Photography | 80.2 | |
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Monochrome photography | 76.2 | |
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Monochrome | 70.2 | |
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Room | 65.7 | |
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Picture frame | 61.1 | |
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Rectangle | 59.4 | |
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Style | 51 | |
|
Color Analysis
Feature analysis
Categories
Imagga
cars vehicles | 83.4% | |
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nature landscape | 7.2% | |
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text visuals | 4.4% | |
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beaches seaside | 1.6% | |
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interior objects | 1.5% | |
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Captions
Microsoft
created on 2019-06-17
a black and white photo of a building | 89.7% | |
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a vintage photo of a building | 88.4% | |
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a black and white photo of an old building | 86% | |
|
Text analysis
Amazon
![](https://ids.lib.harvard.edu/ids/iiif/20414402/560,331,62,19/full/0/native.jpg)
Magnolia
![](https://ids.lib.harvard.edu/ids/iiif/20414402/404,340,77,13/full/0/native.jpg)
MoSlubrication
![](https://ids.lib.harvard.edu/ids/iiif/20414402/404,323,568,30/full/0/native.jpg)
MoSlubrication Magnolia Moile TAM
![](https://ids.lib.harvard.edu/ids/iiif/20414402/672,332,41,18/full/0/native.jpg)
Moile
![](https://ids.lib.harvard.edu/ids/iiif/20414402/893,323,25,27/full/0/native.jpg)
P
![](https://ids.lib.harvard.edu/ids/iiif/20414402/891,321,88,30/full/0/native.jpg)
P JR
![](https://ids.lib.harvard.edu/ids/iiif/20414402/924,319,56,28/full/0/native.jpg)
JR
![](https://ids.lib.harvard.edu/ids/iiif/20414402/868,353,47,18/full/0/native.jpg)
ICE G
![](https://ids.lib.harvard.edu/ids/iiif/20414402/931,352,42,19/full/0/native.jpg)
TAM
![](https://ids.lib.harvard.edu/ids/iiif/20414402/43,326,0,0/full/0/native.jpg)
AAMA
![](https://ids.lib.harvard.edu/ids/iiif/20414402/26,295,959,147/full/0/native.jpg)
...
PUR
ICE G AM
Magnolia
Mobileji
Moilubrication
PRGVED
C
ARP
![](https://ids.lib.harvard.edu/ids/iiif/20414402/506,295,21,12/full/0/native.jpg)
...
![](https://ids.lib.harvard.edu/ids/iiif/20414402/884,321,101,40/full/0/native.jpg)
PUR
![](https://ids.lib.harvard.edu/ids/iiif/20414402/872,359,35,20/full/0/native.jpg)
ICE
![](https://ids.lib.harvard.edu/ids/iiif/20414402/910,357,13,23/full/0/native.jpg)
G
![](https://ids.lib.harvard.edu/ids/iiif/20414402/933,356,40,23/full/0/native.jpg)
AM
![](https://ids.lib.harvard.edu/ids/iiif/20414402/560,334,63,22/full/0/native.jpg)
Magnolia
![](https://ids.lib.harvard.edu/ids/iiif/20414402/670,337,43,22/full/0/native.jpg)
Mobileji
![](https://ids.lib.harvard.edu/ids/iiif/20414402/408,341,76,18/full/0/native.jpg)
Moilubrication
![](https://ids.lib.harvard.edu/ids/iiif/20414402/443,373,32,14/full/0/native.jpg)
PRGVED
![](https://ids.lib.harvard.edu/ids/iiif/20414402/482,390,21,52/full/0/native.jpg)
C
![](https://ids.lib.harvard.edu/ids/iiif/20414402/26,332,18,35/full/0/native.jpg)
ARP