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1,472 People –Gait Recognition Data in Surveillance Scenes
Gait recognition data
security data
intelligent security data
living_face detection data
living_face authentication data
identity identification data
intelligent surveillance data
surveillance scene data
surveillance data collectionrnrn
1,472 People - Gait Recognition Data in Surveillance Scenes. The data scene is outdoor. The data includes males and females, and the age distribution is from children to the elderly. The data diversity includes different time periods, different surveillance cameras, different scenes. The data can be used for tasks such as gait recognition in surveillance scenes.
This is a paid datasets for commercial use, research purpose and more. Licensed ready made datasets help jump-start AI projects.
Specifications
Data size
1,472 people, 7 videos for each person
Population distribution
race distribution: Asian; gender distribution: 865 males, 607 females; age distribution: 106 people under 18 years old, 1,108 people aged from 18 to 45, 111 people aged from 46 to 60, 147 people over 60 years old
Collecting environment
outdoor scenes
Data diversity
different time periods, different surveillance cameras, different scenes
Device
surveillance cameras
Collecting angle
looking down angle
Collecting time
day, night
Data format
the video data format is .mp4
Collection content
collecting gait videos data in different surveillance cameras
Accuracy
collection accuracy: based on the accuracy of the actions, the accuracy exceeds 95%; annotation accuracy: the accuracy of label annotation is not less than 95%
Sample
Waiting For Data
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