Machine Generated Data
Tags
Amazon
created on 2022-01-15
Person | 99 | |
| ||
Human | 99 | |
| ||
Person | 98.9 | |
| ||
Person | 97.4 | |
| ||
Person | 96.7 | |
| ||
Person | 96.2 | |
| ||
Construction Crane | 93.9 | |
| ||
Person | 90.1 | |
| ||
Person | 90 | |
| ||
Person | 88 | |
| ||
Person | 78.3 | |
| ||
Car | 70.7 | |
| ||
Transportation | 70.7 | |
| ||
Vehicle | 70.7 | |
| ||
Automobile | 70.7 | |
| ||
Bus | 63.8 | |
| ||
Person | 63.2 | |
| ||
Person | 62.5 | |
| ||
Car | 57.9 | |
| ||
Construction | 55.9 | |
|
Clarifai
created on 2023-10-26
monochrome | 99.9 | |
| ||
crane | 99.2 | |
| ||
vehicle | 98.9 | |
| ||
industry | 98.8 | |
| ||
machine | 98.2 | |
| ||
watercraft | 97.3 | |
| ||
transportation system | 97.1 | |
| ||
expression | 96.4 | |
| ||
harbor | 96 | |
| ||
heavy | 94.8 | |
| ||
ship | 94.7 | |
| ||
building | 93.8 | |
| ||
no person | 93.4 | |
| ||
people | 93.1 | |
| ||
black and white | 92.7 | |
| ||
pier | 92.1 | |
| ||
lift | 90.6 | |
| ||
port | 90.6 | |
| ||
sky | 89.9 | |
| ||
city | 89.8 | |
|
Imagga
created on 2022-01-15
Google
created on 2022-01-15
Photograph | 94.2 | |
| ||
Vehicle | 92.4 | |
| ||
Black | 89.6 | |
| ||
Wheel | 86.9 | |
| ||
Sky | 83.5 | |
| ||
Rectangle | 81.2 | |
| ||
Adaptation | 79.3 | |
| ||
Crane | 77.3 | |
| ||
Grass | 77 | |
| ||
Tints and shades | 76.7 | |
| ||
Plant | 75.9 | |
| ||
Font | 75.7 | |
| ||
Monochrome | 75.1 | |
| ||
Monochrome photography | 74.9 | |
| ||
Snapshot | 74.3 | |
| ||
Tree | 71.5 | |
| ||
Pole | 69.2 | |
| ||
Event | 66.7 | |
| ||
Construction equipment | 64.3 | |
| ||
Electricity | 63.1 | |
|
Color Analysis
Feature analysis
Amazon
Categories
Imagga
streetview architecture | 61.7% | |
| ||
cars vehicles | 15.2% | |
| ||
interior objects | 12.5% | |
| ||
beaches seaside | 6.4% | |
| ||
nature landscape | 2.6% | |
|
Captions
Microsoft
created on 2022-01-15
an old photo of a person | 48.8% | |
| ||
old photo of a person | 46.8% | |
| ||
an old photo of a person | 46.7% | |
|
Text analysis
Amazon
![](https://ids.lib.harvard.edu/ids/iiif/18818084/565,983,161,31/full/0/native.jpg)
43532
![](https://ids.lib.harvard.edu/ids/iiif/18818084/642,665,9,10/full/0/native.jpg)
A
![](https://ids.lib.harvard.edu/ids/iiif/18818084/607,16,69,9/full/0/native.jpg)
VAGOY
![](https://ids.lib.harvard.edu/ids/iiif/18818084/413,363,323,657/full/0/native.jpg)
4 3 532
VAVAVW VVVA
![](https://ids.lib.harvard.edu/ids/iiif/18818084/554,987,65,33/full/0/native.jpg)
4
![](https://ids.lib.harvard.edu/ids/iiif/18818084/621,987,31,32/full/0/native.jpg)
3
![](https://ids.lib.harvard.edu/ids/iiif/18818084/654,985,82,34/full/0/native.jpg)
532
![](https://ids.lib.harvard.edu/ids/iiif/18818084/414,363,48,87/full/0/native.jpg)
VAVAVW
![](https://ids.lib.harvard.edu/ids/iiif/18818084/451,469,42,70/full/0/native.jpg)
VVVA