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189 Videos-Electric Bicycle Entering Elevator Data

different types of elevators
different types of electric bicycles
different types of non-electric bicycles
different time periods

189 Videos-Electric Bicycle Entering Elevator Data,the total duration is 1 hour 58 minutes 40.72 seconds. The data covers different types of elevators, different types of electric bicycles, different time periods. The data can be used for tasks such as electric bicycle detection, electric bicycle recognition .

Paid Datasets
This is a paid datasets for commercial use, research purpose and more. Licensed ready made datasets help jump-start AI projects.
SpecificationsSpecifications
Data size
189 videos, the total duration is 1 hour 58 minutes 40.72 seconds
Collecting environment
indoor scenes
Data diversity
different types of elevators, different types of non-electric bicycles, different types of electric bicycles, different time periods
Device
surveillance cameras
Data format
.mp4
Accuracy
the accuracy of label of vehicle type is more than 97%
Sample Sample
  • 189 Videos-Electric Bicycle Entering Elevator Data
  • 189 Videos-Electric Bicycle Entering Elevator Data
  • 189 Videos-Electric Bicycle Entering Elevator Data
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