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9,181 People 59,490 Images Cross-age Faces Data

Cross-age
human faces
several images for one person
different ages
indoor and outdoor scenes
Asian
cross-age face recognition

9,181 People 59,490 Images Cross-age Faces Data. The data includes indoor and outdoor scenes. The dataset includes female and male (Asian). For most people, the age spans are 10 years at least, the age spans of only a few people are less than 10 years (128 people). For each person, at least 4 front side images were collected. The data can be used for tasks such as cross-age face recognition.

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SpecificationsSpecifications
Data size
9,181 people, 59,490 images
Population distribution: race distribution
Asian; gender distribution: : 5,097 females, 4,084 males
Environment
indoor and outdoor scenes
Diversity
several images for one person, different scenes, different age periods
Device
cellphone
Format
the image data format is .jpg, .png or .jpeg, the annotation file format is .json
Collection content
the front side of the people faces in different ages were collected
Annotation content
the human face bounding boxes were annotated for each subject
Accuracy
the accuracy exceeds 97% based on the accuracy of the sharpness and age group; the bounding box of face is qualified when the deviation is not more than 3 pixels, and the qualified rate of the bounding box shall not be lower than 97%
Sample Sample
  • Waiting For Data
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Face recognition Face occlusion Multi-pose per person Face with mask Multiple light conditions Multiplescenes blockage closure stoppage block stop obstruction blocking occluded front occlusive check closing embolism apoplexy shutdown hindrance blockade thrombosis impaction tampons arrest close congestion embolus fastener hitch obturation seal stopper abocclusion blocks clog clot clotting constipation holdup impediment occludent plug stoppages stopples stops tampon thrombus airlock barrier cap catch clogging cork plugging posture perplex puzzle mystify nonplus bewilder gravel flummox position baffle amaze dumbfound masquerade beat stick stupefy impersonate attitude place stance model present affectation mannerism attitudinize sit put submit show airs front propose suggest pretense propound affectedness raise strike a pose constitute facade personate show off advance pretend act bluff arrange put on airs peacock posing confront look meet front facing surface encounter side brave grimace experience visage address veneer countenance tackle cover oppose confronting defy expression aspect appearance cheek watch challenge nerve font overlook endure withstand suffer brass cope with dial head exterior typeface handle undergo be facing facade face up facial expression physiognomy beard boldness outside deal faces
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