Paper:
Identity Verification Based on Facial Pose Pool and Bag of Words Model
Wangbin Chu and Yepeng Guan†
School of Communication and Information Engineering, Shanghai University
99 Shangda Road, BaoShan District, Shanghai, China
†Corresponding author
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