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4,253 Pairs of Human Face Images – Before and After Makeup
Face recognition
Make-up image data
facial data
4,253 Pairs of Human Face Images – Before and After Makeup. For each pair, one image without makeup and one image with makeup are included. This dataset can be used for tasks such as face recognition and makeup style analysis.
This is a paid datasets for commercial use, research purpose and more. Licensed ready made datasets help jump-start AI projects.
Specifications
Data size
4,253 pairs of images; one image without makeup and one image with makeup per pair
Race distribution
914 pairs of black people, 1,500 pairs of Caucasian people, 1,839 pairs of Asian people
Gender distribution
183 pairs of males and 4,070 pairs of females
Collecting environment
indoor scenes
Data diversity
different races, ages and makeup styles
Data format
.png
Accuracy
the accuracy of labels of race and gender is at least 97%
Sample
Waiting For Data
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