Machine Generated Data
Tags
Amazon
created on 2022-01-30
Wheel | 98.6 | |
| ||
Machine | 98.6 | |
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Person | 97.6 | |
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Human | 97.6 | |
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Wheel | 95.5 | |
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Vehicle | 92.6 | |
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Transportation | 92.6 | |
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Tire | 83 | |
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Tarmac | 75.9 | |
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Asphalt | 75.9 | |
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Truck | 75.4 | |
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Car | 75.3 | |
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Automobile | 75.3 | |
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Fire Truck | 72.9 | |
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Spoke | 69 | |
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Sports Car | 57.7 | |
|
Clarifai
created on 2023-10-29
Imagga
created on 2022-01-30
truck | 100 | |
| ||
motor vehicle | 68.1 | |
| ||
vehicle | 50.5 | |
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car | 49.5 | |
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fire engine | 44.9 | |
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transportation | 39.4 | |
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trailer truck | 33.1 | |
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transport | 30.1 | |
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wheeled vehicle | 26.2 | |
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trailer | 26.1 | |
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auto | 24.9 | |
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road | 24.4 | |
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wheel | 22.8 | |
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engine | 22.1 | |
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automobile | 21.1 | |
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driving | 20.3 | |
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old | 18.1 | |
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machine | 16.6 | |
| ||
cargo | 16.5 | |
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equipment | 16.4 | |
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tire | 16.3 | |
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motor | 15.5 | |
| ||
speed | 14.6 | |
| ||
pickup | 14.4 | |
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tow truck | 14.4 | |
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power | 13.4 | |
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lorry | 13.1 | |
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industry | 12.8 | |
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shipping | 12.6 | |
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highway | 12.5 | |
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semi | 11.8 | |
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tractor | 11.8 | |
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delivery | 11.7 | |
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vintage | 11.6 | |
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fire | 11.2 | |
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diesel | 11 | |
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tires | 10.8 | |
| ||
retro | 10.6 | |
| ||
antique | 10.5 | |
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traffic | 10.4 | |
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drive | 10.4 | |
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station | 10.2 | |
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trucking | 9.9 | |
| ||
rescue | 9.8 | |
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freight | 9.8 | |
| ||
wheels | 9.8 | |
| ||
driver | 9.7 | |
| ||
emergency | 9.6 | |
| ||
sky | 9.6 | |
| ||
heavy | 9.5 | |
| ||
fast | 9.3 | |
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classic | 9.3 | |
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bumper | 9.1 | |
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industrial | 9.1 | |
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load | 8.8 | |
| ||
machinery | 8.8 | |
| ||
track | 8.6 | |
| ||
travel | 8.4 | |
| ||
fire station | 8.3 | |
| ||
street | 8.3 | |
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metal | 8 | |
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farm | 8 | |
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container | 8 | |
| ||
haul | 7.9 | |
| ||
trucks | 7.9 | |
| ||
rig | 7.9 | |
| ||
service | 7.4 | |
| ||
safety | 7.4 | |
| ||
object | 7.3 | |
| ||
facility | 7.2 | |
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work | 7.1 | |
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agriculture | 7 | |
|
Google
created on 2022-01-30
Wheel | 97.5 | |
| ||
Tire | 97.3 | |
| ||
Land vehicle | 96.3 | |
| ||
Car | 95.9 | |
| ||
Vehicle | 95.8 | |
| ||
Motor vehicle | 92.3 | |
| ||
Truck | 90.7 | |
| ||
Automotive tire | 88.8 | |
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Automotive design | 83.9 | |
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Automotive exterior | 82.4 | |
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Font | 80 | |
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Automotive lighting | 77.1 | |
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Classic | 76.3 | |
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Classic car | 76.3 | |
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Automotive wheel system | 74.3 | |
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Kit car | 71.4 | |
| ||
Antique car | 68 | |
| ||
Hardtop | 67.2 | |
| ||
Rectangle | 67 | |
| ||
Bumper | 65.5 | |
|
Color Analysis
Face analysis
Amazon

AWS Rekognition
Age | 41-49 |
Gender | Male, 97.5% |
Calm | 29.4% |
Disgusted | 29.2% |
Happy | 10.3% |
Surprised | 9.9% |
Fear | 8.4% |
Confused | 6.6% |
Angry | 4.5% |
Sad | 1.6% |
Feature analysis
Categories
Imagga
text visuals | 94.3% | |
| ||
interior objects | 5.3% | |
|
Captions
Microsoft
created on 2022-01-30
a vintage photo of a truck | 79.9% | |
| ||
a vintage photo of a bus | 49.3% | |
| ||
a vintage photo of a person riding on the back of a truck | 37.2% | |
|
Text analysis
Amazon

ARMO

MILLS

Triangle

Phone

Phone Triangle 55423

Sweet

AUTOMATIC

TEXAS

55423

AUTOMATIC UNLOADING

SUPPLY

UNLOADING

FEEDS

FRANK

EEED

QUALITY

MOLASSES

GRINDING-MIXING

Swift's

COMPRETE

FEED-J-NIT

`Fresh Sweet

EEP

LULING TEXAS

THISFARM

FRANK F320 SUPPLY

ARM

`Fresh

LULING

O THISFARM

O

F320

MANUSACTURING

Datting

MU3-YT33A°S

ARMD
ARMO O MILLS
QUALITY
EED
ARMA COLiP.ETE
OUALITY C THIFARM
EFEP
GRINDING MIXING
SWITLS
FEEDS
FEEO- J-NIT
AUTOMATIC UNLOADING
2.
D
MAACT co
OANK FD SUPPIK
Fresh Sweet
MOLASSES
LULING, TEXAS
D Phone Triangle 55423

ARMD

ARMO

O

MILLS

QUALITY

EED

ARMA

COLiP.ETE

OUALITY

C

THIFARM

EFEP

GRINDING

MIXING

SWITLS

FEEDS

FEEO-

J-NIT

AUTOMATIC

UNLOADING

2.

D

MAACT

co

OANK

FD

SUPPIK

Fresh

Sweet

MOLASSES

LULING,

TEXAS

Phone

Triangle

55423