Machine Generated Data
Tags
Amazon
created on 2019-05-29
Human | 99.7 | |
| ||
Person | 99.7 | |
| ||
Person | 98.9 | |
| ||
Vehicle | 98.8 | |
| ||
Bicycle | 98.8 | |
| ||
Bike | 98.8 | |
| ||
Transportation | 98.8 | |
| ||
Person | 98.6 | |
| ||
Person | 98.5 | |
| ||
Person | 98 | |
| ||
Road | 96.9 | |
| ||
Person | 96.8 | |
| ||
Automobile | 96.5 | |
| ||
Car | 96.5 | |
| ||
Machine | 96.3 | |
| ||
Wheel | 96.3 | |
| ||
Wheel | 93.3 | |
| ||
Tarmac | 92.7 | |
| ||
Asphalt | 92.7 | |
| ||
Steeple | 92.1 | |
| ||
Architecture | 92.1 | |
| ||
Tower | 92.1 | |
| ||
Spire | 92.1 | |
| ||
Building | 92.1 | |
| ||
Person | 90.8 | |
| ||
Person | 90.6 | |
| ||
Wheel | 90.4 | |
| ||
Street | 78.8 | |
| ||
Urban | 78.8 | |
| ||
Town | 78.8 | |
| ||
City | 78.8 | |
| ||
Pedestrian | 75.8 | |
| ||
Wheel | 68.1 | |
| ||
Person | 67.2 | |
| ||
Path | 64.5 | |
| ||
Intersection | 61.5 | |
| ||
Downtown | 60.8 | |
| ||
Brick | 55.9 | |
|
Clarifai
created on 2019-05-29
people | 97.6 | |
| ||
street | 97.5 | |
| ||
home | 96 | |
| ||
group | 96 | |
| ||
many | 91.9 | |
| ||
architecture | 91.7 | |
| ||
group together | 90.9 | |
| ||
no person | 88.9 | |
| ||
vehicle | 88.7 | |
| ||
town | 88.5 | |
| ||
building | 87.4 | |
| ||
city | 86.8 | |
| ||
monochrome | 83.5 | |
| ||
administration | 81.9 | |
| ||
several | 79.9 | |
| ||
military | 79.9 | |
| ||
house | 79.2 | |
| ||
outdoors | 78.6 | |
| ||
travel | 78.1 | |
| ||
war | 75.8 | |
|
Imagga
created on 2019-05-29
architecture | 59.8 | |
| ||
city | 52.5 | |
| ||
building | 50.2 | |
| ||
street | 39.6 | |
| ||
old | 35.6 | |
| ||
travel | 29.6 | |
| ||
university | 29.5 | |
| ||
historic | 29.4 | |
| ||
urban | 27.1 | |
| ||
house | 27.1 | |
| ||
tourism | 26.4 | |
| ||
town | 26 | |
| ||
buildings | 24.6 | |
| ||
ancient | 22.5 | |
| ||
history | 22.4 | |
| ||
conveyance | 19.7 | |
| ||
bus | 19.6 | |
| ||
sky | 19.5 | |
| ||
car | 19.5 | |
| ||
landmark | 19 | |
| ||
historical | 17.9 | |
| ||
houses | 17.5 | |
| ||
brick | 17.1 | |
| ||
tourist | 16.7 | |
| ||
stone | 16.1 | |
| ||
tramway | 16 | |
| ||
cityscape | 15.2 | |
| ||
cathedral | 14.6 | |
| ||
road | 14.5 | |
| ||
capital | 14.3 | |
| ||
church | 13.9 | |
| ||
trolleybus | 13.8 | |
| ||
architectural | 13.5 | |
| ||
public transport | 13.1 | |
| ||
wall | 13 | |
| ||
window | 13 | |
| ||
home | 12.8 | |
| ||
center | 12.8 | |
| ||
tower | 12.5 | |
| ||
england | 12.4 | |
| ||
streetcar | 12.4 | |
| ||
office | 12.2 | |
| ||
palace | 12 | |
| ||
sightseeing | 11.7 | |
| ||
college | 11.6 | |
| ||
river | 11.6 | |
| ||
roof | 11.5 | |
| ||
castle | 11.4 | |
| ||
square | 10.9 | |
| ||
facade | 10.6 | |
| ||
windows | 10.6 | |
| ||
place | 10.3 | |
| ||
boat | 10.3 | |
| ||
wheeled vehicle | 10 | |
| ||
canal | 9.8 | |
| ||
cars | 9.8 | |
| ||
dutch | 9.7 | |
| ||
water | 9.4 | |
| ||
monument | 9.4 | |
| ||
vintage | 9.1 | |
| ||
residence | 9 | |
| ||
landscape | 8.9 | |
| ||
scene | 8.7 | |
| ||
medieval | 8.6 | |
| ||
lamp | 8.6 | |
| ||
snow | 8.6 | |
| ||
people | 8.4 | |
| ||
exterior | 8.3 | |
| ||
vacation | 8.2 | |
| ||
religion | 8.1 | |
| ||
trees | 8 | |
| ||
business district | 7.9 | |
| ||
scenic | 7.9 | |
| ||
pavement | 7.9 | |
| ||
day | 7.9 | |
| ||
property | 7.7 | |
| ||
summer | 7.7 | |
| ||
culture | 7.7 | |
| ||
downtown | 7.7 | |
| ||
bridge | 7.6 | |
| ||
structure | 7.4 | |
|
Google
created on 2019-05-29
Vehicle | 88.7 | |
| ||
Town | 87.8 | |
| ||
Mode of transport | 87.3 | |
| ||
Street | 83.9 | |
| ||
Transport | 83.5 | |
| ||
Car | 82.8 | |
| ||
Snapshot | 82 | |
| ||
Building | 69.2 | |
| ||
History | 68.8 | |
| ||
Neighbourhood | 66.4 | |
| ||
Family car | 60.7 | |
| ||
Vintage car | 60.2 | |
| ||
Monochrome | 54.4 | |
| ||
House | 53.7 | |
| ||
City | 51.3 | |
|
Color Analysis
Face analysis
Amazon
AWS Rekognition
Age | 17-27 |
Gender | Female, 50.3% |
Happy | 49.5% |
Disgusted | 49.6% |
Surprised | 49.5% |
Confused | 49.5% |
Sad | 50% |
Angry | 49.7% |
Calm | 49.6% |
AWS Rekognition
Age | 20-38 |
Gender | Female, 50.1% |
Confused | 49.6% |
Surprised | 49.6% |
Disgusted | 49.6% |
Calm | 49.5% |
Angry | 49.7% |
Happy | 49.6% |
Sad | 50% |
Feature analysis
Text analysis
Amazon
1932IMH
3IT3VU8
3IT3VU8 LMAT
LMAT