Machine Generated Data
Tags
Amazon
created on 2023-10-06
Utility Pole | 92.4 | |
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Outdoors | 90.2 | |
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Road | 83.7 | |
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Person | 78.7 | |
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Railway | 78 | |
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Transportation | 78 | |
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Plant | 74.8 | |
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Tree | 74.8 | |
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Construction | 56.6 | |
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Light | 55.5 | |
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Traffic Light | 55.5 | |
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Clothing | 55.4 | |
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Shorts | 55.4 | |
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Train | 55.3 | |
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Vehicle | 55.3 | |
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Terminal | 55.1 | |
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Train Station | 55.1 | |
|
Clarifai
created on 2018-05-11
Imagga
created on 2023-10-06
Google
created on 2018-05-11
transport | 94.4 | |
| ||
black and white | 87.8 | |
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track | 87.8 | |
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rail transport | 67.4 | |
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tree | 65.2 | |
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monochrome photography | 62.9 | |
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monochrome | 62.3 | |
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history | 57 | |
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public utility | 52.1 | |
|
Color Analysis
Feature analysis
Amazon
![](https://ids.lib.harvard.edu/ids/iiif/43157921/495,387,13,30/full/0/native.jpg)
Person | 78.7% | |
|
Categories
Imagga
nature landscape | 41.6% | |
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streetview architecture | 41.5% | |
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beaches seaside | 12.5% | |
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paintings art | 3% | |
|
Captions
Microsoft
created on 2018-05-11
a man riding a skateboard up the side of a road | 32.8% | |
| ||
a man riding a skateboard up the side of the road | 31.9% | |
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a man riding a skateboard down the side of a road | 31% | |
|
Text analysis
Amazon
![](https://ids.lib.harvard.edu/ids/iiif/43157921/522,417,71,22/full/0/native.jpg)
STOP
![](https://ids.lib.harvard.edu/ids/iiif/43157921/531,441,51,17/full/0/native.jpg)
WHEN
![](https://ids.lib.harvard.edu/ids/iiif/43157921/573,217,33,18/full/0/native.jpg)
OUT
![](https://ids.lib.harvard.edu/ids/iiif/43157921/512,460,90,19/full/0/native.jpg)
SWINGING
![](https://ids.lib.harvard.edu/ids/iiif/43157921/520,215,46,18/full/0/native.jpg)
LOOK
![](https://ids.lib.harvard.edu/ids/iiif/43157921/508,239,107,23/full/0/native.jpg)
LOCOMOTIVE
![](https://ids.lib.harvard.edu/ids/iiif/43157921/538,200,50,13/full/0/native.jpg)
TRACKS
![](https://ids.lib.harvard.edu/ids/iiif/43157921/510,158,54,51/full/0/native.jpg)
CRO
![](https://ids.lib.harvard.edu/ids/iiif/43157921/565,102,57,56/full/0/native.jpg)
SING
![](https://ids.lib.harvard.edu/ids/iiif/43157921/566,233,22,10/full/0/native.jpg)
THE
![](https://ids.lib.harvard.edu/ids/iiif/43157921/512,98,55,59/full/0/native.jpg)
RAIL
![](https://ids.lib.harvard.edu/ids/iiif/43157921/538,231,50,12/full/0/native.jpg)
FOR THE
![](https://ids.lib.harvard.edu/ids/iiif/43157921/510,98,112,115/full/0/native.jpg)
RAIL GROAD
![](https://ids.lib.harvard.edu/ids/iiif/43157921/538,232,26,10/full/0/native.jpg)
FOR
![](https://ids.lib.harvard.edu/ids/iiif/43157921/561,185,8,11/full/0/native.jpg)
3
![](https://ids.lib.harvard.edu/ids/iiif/43157921/551,141,70,70/full/0/native.jpg)
GROAD
![](https://ids.lib.harvard.edu/ids/iiif/43157921/515,201,91,281/full/0/native.jpg)
IK
FOR THE
OC
STD P
WHEN
SWINGING
![](https://ids.lib.harvard.edu/ids/iiif/43157921/541,201,17,17/full/0/native.jpg)
IK
![](https://ids.lib.harvard.edu/ids/iiif/43157921/540,233,24,14/full/0/native.jpg)
FOR
![](https://ids.lib.harvard.edu/ids/iiif/43157921/567,234,24,14/full/0/native.jpg)
THE
![](https://ids.lib.harvard.edu/ids/iiif/43157921/524,242,24,20/full/0/native.jpg)
OC
![](https://ids.lib.harvard.edu/ids/iiif/43157921/524,419,53,24/full/0/native.jpg)
STD
![](https://ids.lib.harvard.edu/ids/iiif/43157921/579,422,18,21/full/0/native.jpg)
P
![](https://ids.lib.harvard.edu/ids/iiif/43157921/535,444,51,18/full/0/native.jpg)
WHEN
![](https://ids.lib.harvard.edu/ids/iiif/43157921/515,462,91,20/full/0/native.jpg)
SWINGING