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1,995 People Face Images Data (Asian race). For each subject, more than 20 images per person with frontal face were collected. This data can be used for face recognition and other 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
1,995 people, more than 20 images per person with frontal face
Race distribution
Asian people
Gender distribution
816 males, 1,179 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 ages and scenes
Device
cellphone
Data format
.jpg, .png
Accuracy
the accuracy of labels of gender, age and wearing glasses or not is more than 97%
Sample
Waiting For Data
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