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5,993 People – Infrared Face Recognition Data. The collecting scenes of this dataset include indoor scenes and outdoor scenes. The data includes male and female. The age distribution ranges from child to the elderly, the young people and the middle aged are the majorities. The collecting device is realsense D453i. The data diversity includes multiple age periods, multiple facial postures, multiple scenes. The data can be used for tasks such as infrared face recognition.
This is a paid datasets for commercial use, research purpose and more. Licensed ready made datasets help jump-start AI projects.
Specifications
Data size
5,993 people, 28 images for each person (RGB + IR)
Population distribution
race distribution: Asian; gender distribution: 3,074 male, 2,919 female; age distribution:ranging from teenager to the elderly, the middle-aged and young people are the majorities
Collecting environment
indoor scenes, outdoor scenes
Data diversity
multiple age periods, multiple facial postures, multiple scenes
Device
Realsense D453i, the resolution is 1,280*720
Data format
the image data format is .jpg, the camera parameter information file format is .txt
Annotation content
label the person – ID, race, gender, age, facial action, collecting scene
Accuracy rate
based on the accuracy of the actions, the accuracy exceeds 97%; the accuracy of label annotation is not less than 97%
Sample
Waiting For Data
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