[{"@type":"PropertyValue","name":"Data size","value":"1,078 people"},{"@type":"PropertyValue","name":"Population distribution","value":"yellow race(China mainland), male: 491, female: 587, age: 18-60"},{"@type":"PropertyValue","name":"Collection environment","value":"including indoor and outdoor scenes"},{"@type":"PropertyValue","name":"Data Diversity","value":"different light conditions, difference scenes, different face actions"},{"@type":"PropertyValue","name":"Collection device","value":"Realsense SR300"},{"@type":"PropertyValue","name":"Collection time","value":"daytime"},{"@type":"PropertyValue","name":"Image parameters","value":"the video resolution is 1,920*1,080, video format is .rddsk, the rssdk video inlcudes RGB, Depth, IR channels and camera paremeters"},{"@type":"PropertyValue","name":"Annotation","value":"for each subject, annotated the labels of gender and age, for each video file, annotated the labels of scene, face action, glasses and distance"},{"@type":"PropertyValue","name":"Accuracy","value":"the accuracy of face action exceeds 97%, the accuracy of label exceeds 97%"}]
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1,078 People 3D Faces Collection Data. The collection device is Realsense SR300. Each subject was collected once a week, 6 times in total, so the time span is 6 weeks. The number of videos collected for one subject is 16. The dataset can be used for tasks such as 3D face recognition.
This is a paid datasets for commercial use, research purpose and more. Licensed ready made datasets help jump-start AI projects.
different light conditions, difference scenes, different face actions
Collection device
Realsense SR300
Collection time
daytime
Image parameters
the video resolution is 1,920*1,080, video format is .rddsk, the rssdk video inlcudes RGB, Depth, IR channels and camera paremeters
Annotation
for each subject, annotated the labels of gender and age, for each video file, annotated the labels of scene, face action, glasses and distance
Accuracy
the accuracy of face action exceeds 97%, the accuracy of label exceeds 97%
Sample
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