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Human Generated Data

Title

[Train]

Date

1930s

People

Artist: Lyonel Feininger, American 1871 - 1956

Classification

Photographs

Credit Line

Harvard Art Museums/Busch-Reisinger Museum, Gift of T. Lux Feininger, BRLF.349.17

Copyright

© Artists Rights Society (ARS), New York / VG Bild-Kunst, Bonn

Human Generated Data

Title

[Train]

People

Artist: Lyonel Feininger, American 1871 - 1956

Date

1930s

Classification

Photographs

Credit Line

Harvard Art Museums/Busch-Reisinger Museum, Gift of T. Lux Feininger, BRLF.349.17

Copyright

© Artists Rights Society (ARS), New York / VG Bild-Kunst, Bonn

Machine Generated Data

Tags

Amazon
created on 2019-05-29

Transportation 99.8
Railway 99.8
Train Track 99.8
Rail 99.8
Machine 99.7
Wheel 99.7
Wheel 98.9
Vehicle 98
Train 98
Wheel 97.4
Shipping Container 90.3
Train 80
Locomotive 79.4
Wheel 70
Freight Car 60
Wheel 53.3

Clarifai
created on 2019-05-29

train 99.9
railway 99.9
transportation system 99.7
vehicle 99.4
locomotive 98.8
engine 98.2
no person 97.3
track 95
people 93.8
wagon 92.9
carriage 91.2
road 80.8
condensation 79.2
industry 79
smoke 77.3
many 74
travel 70.8
two 70.8
group 68.6
military 68.5

Imagga
created on 2019-05-29

freight car 100
car 100
wheeled vehicle 100
vehicle 82.2
locomotive 48
train 40.4
transportation 37.7
railway 37.3
railroad 34.4
transport 33.8
conveyance 30.7
track 30.2
steam locomotive 28.8
rail 26.5
industry 25.6
industrial 25.4
steam 25.2
old 25.1
engine 23.1
power 22.7
cargo 18.4
tank 17.3
sky 17.2
travel 16.9
steel 15.9
smoke 15.8
station 15.5
vintage 14.9
freight 14.7
energy 13.5
oil 13
wagon 12.8
delivery 12.6
war 12.5
move 12.5
metal 12.1
black 12
diesel 11.8
road 11.7
fuel 11.6
urban 11.4
container 11.3
tracks 10.8
mass 10.8
goods 10.8
retro 10.7
supply 10.6
ship 10.4
wheel 10.4
iron 10.3
carriage 9.9
logistics 9.9
history 9.8
shipping 9.7
landscape 9.7
factory 9.6
trade 9.6
outside 9.4
city 9.1
business 9.1
danger 9.1
chemical 8.7
gas 8.7
pollution 8.7
winter 8.5
historic 8.3
outdoors 8.2
snow 8
water 8
tanker 7.9
shipment 7.9
coal 7.9
petrol 7.8
barrel 7.8
route 7.8
line 7.7
heavy 7.6
trip 7.5
environment 7.4
building 7.1
river 7.1
architecture 7

Google
created on 2019-05-29

Microsoft
created on 2019-05-29

train 99.9
outdoor 98.2
track 94.4
locomotive 92.2
land vehicle 91.7
vehicle 90.9
old 86.8
black 80.4
rail 76.1
white 70.1
wheel 68.2
engine 54.7
railroad 23.7

Color Analysis

Feature analysis

Amazon

Wheel
Train
Wheel 99.7%

Categories

Imagga

cars vehicles 99.9%

Captions

Google Gemini

Created by gemini-2.0-flash on 2025-04-30

The black and white photograph depicts a locomotive train, parked on a track amidst a landscape punctuated by industrial elements. The steam engine, a heavy, dark-colored machine, dominates the composition's center. The locomotive’s tender is labeled 'NEW YORK', suggesting its provenance or destination.

Behind the locomotive, a large industrial building stands. Behind the building, three tall smokestacks reach towards the sky. The overall scene exudes a sense of industrialization, a snapshot from a time when rail transport and factories were at their peak.

Created by gemini-2.0-flash-lite on 2025-04-30

Here is a description of the image:

The image shows a black and white photograph of a steam locomotive parked on train tracks. The locomotive is positioned to the right of the frame, with its tender (the car that carries fuel and water) attached. The words "NEW YORK" are visible, printed in reverse, on the side of the tender. The number "7212" is visible on the front of the engine.

In the background, there are several tall, cylindrical smokestacks, likely belonging to a factory or industrial complex. The smokestacks are positioned to the left and centered in the image. Behind them, there's a glimpse of a building and some trees. The photo is taken from a slightly low angle, with the train tracks and the locomotive's wheels clearly visible in the foreground. The sky is overcast, and the overall tone of the photograph is somber.

Text analysis

Amazon

OTA
HESIOT
HESIOT va
va

Google

TA3
TA3