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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.
This is a paid datasets for commercial use, research purpose and more. Licensed ready made datasets help jump-start AI projects.
Specifications
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
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