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23,110 People Multi-race and Multi-pose Face Images Data

Multi-race
Multiple light conditions
Multi-pose
Multi scenes
Face Recognition

23,110 People Multi-race and Multi-pose Face Images Data. This data includes Asian race, Caucasian race, black race, brown race and Indians. Each subject were collected 29 images under different scenes and light conditions. The 29 images include 28 photos (multi light conditions, multiple poses and multiple scenes) + 1 ID photo. This data can be used for face recognition related tasks.

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SpecificationsSpecifications
Data size
23,110 people, 29 images per person
Race distribution
7,324 black people, 3,830 Caucasian people, 918 brown (Mexican) people, 6,270 Indian people and 4,768 Asian people
Gender distribution
12,480 males ,  10,630 females
Age distribution
ranging from teenager to the elderly, the middle-aged and young people are the majorities
Collecting environment
including indoor and outdoor scenes
Data diversity
different face poses, races, ages, light conditions and scenes
Device
cellphone
Data format
.jpg
Accuracy
the accuracy of labels of face pose, race, gender and age are more than 97%
Sample Sample
  • 23,110 People Multi-race and Multi-pose Face Images Data
  • 23,110 People Multi-race and Multi-pose Face Images Data
  • 23,110 People Multi-race and Multi-pose Face Images Data
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3D&2D Living_Face & Anti_Spoofing various expressions facial postures anti-spoofing samples multiple light conditions multiple scenes 3D mask
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Different face poses and races Different ages Different lighting Different collection environments
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infrared face recognition indoor scenes outdoor scenes realsense D453i multiple age periods multiple facial postures multiple scenes
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3D facial expressions recognition different expressions different ages different races different collecting scenes
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3D Face Recognition multiple facial postures multiple light conditions multiple indoor scenes
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Face recognition Face occlusion Multi-pose per person Face with mask Multiple light conditions Multiplescenes blockage closure stoppage block stop obstruction blocking occluded front occlusive check closing embolism apoplexy shutdown hindrance blockade thrombosis impaction tampons arrest close congestion embolus fastener hitch obturation seal stopper abocclusion blocks clog clot clotting constipation holdup impediment occludent plug stoppages stopples stops tampon thrombus airlock barrier cap catch clogging cork plugging posture perplex puzzle mystify nonplus bewilder gravel flummox position baffle amaze dumbfound masquerade beat stick stupefy impersonate attitude place stance model present affectation mannerism attitudinize sit put submit show airs front propose suggest pretense propound affectedness raise strike a pose constitute facade personate show off advance pretend act bluff arrange put on airs peacock posing confront look meet front facing surface encounter side brave grimace experience visage address veneer countenance tackle cover oppose confronting defy expression aspect appearance cheek watch challenge nerve font overlook endure withstand suffer brass cope with dial head exterior typeface handle undergo be facing facade face up facial expression physiognomy beard boldness outside deal faces
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