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11,113 People - Face Recognition Data with Gauze Mask

Face recognition
Face occlusion
Frontal face
Gause mask

11,113 People - Face Recognition Data with Gauze Mask, for each subject, 7 images were collected. The dataset diversity includes multiple mask types, multiple ages, multiple races, multiple light conditions and scenes.This data can be applied to computer vision tasks such as occluded face detection and recognition.

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SpecificationsSpecifications
Data size
11,113 people, 7 images per person
Race distribution
9,655 Asian people, 951 black people, 42 brown people, 465 Caucasian people
Gender distribution
6,055 males, 5,058 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
multiple mask types, multiple ages, multiple races or nationalities, multiple light conditions and multiple collection scenes
Device
cellphone
Data format
.jpg, .jpeg
Accuracy
the accuracy of labels of mask type, gender, race or nationality and age are more than 97%
Sample Sample
  • 11,113 People - Face Recognition Data with Gauze Mask
  • 11,113 People - Face Recognition Data with Gauze Mask
  • 11,113 People - Face Recognition Data with Gauze Mask
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