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65 People –15,204 Videos of Sports and Fitness Video Data
Sports and fitness
IR and RGB cameras
human behavior recognition
human segmentation
fitness scenes.
65 People –15,204 Videos of Sports and Fitness Video Data. The data collection scene is indoor scenes. The race distribution is Asian, black and Caucasian; the age distribution is young and middle-aged people. The collection device is IR and RGB cameras. The dataset diversity includes different races, different age groups, different shooting angles, different collection distances, different human body orientations, different costumes and various fitness actions. The data can be used for tasks such as human behavior recognition and human segmentation in fitness 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
65 people, 15,204 videos
Population distribution
race distribution: 37 Asians, 24 Caucasians, 4 Black People; gender distribution: 24 males, 41 females; age distribution: 61 young people, 4 middle-aged people
Collecting environment:
indoor scenes
Data diversity
different races, different age groups, different shooting angles, different collection distances, different human body orientations, different costumes and various fitness actions
Device
infrared and color cameras, the camera resolution is 1,920x1,080
Collecting angle
eye-level angle, simultaneous collection by three cameras (left, middle and right)
Data format
.mp4
Collection content
collecting fitness videos of different people under one or two sets of clothing
Accuracy
the accuracy of video action is not less than 97%; the accuracy of label annotation is not less than 97%
Sample
Waiting For Data
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