Author_Institution :
Dept. of Comput., Hong Kong Polytech. Univ., Hong Kong, China
Abstract :
Factors such as misalignment, pose variation, and occlusion make robust face recognition a difficult problem. It is known that statistical features such as local binary pattern are effective for local feature extraction, whereas the recently proposed sparse or collaborative representation-based classification has shown interesting results in robust face recognition. In this paper, we propose a novel robust kernel representation model with statistical local features (SLF) for robust face recognition. Initially, multipartition max pooling is used to enhance the invariance of SLF to image registration error. Then, a kernel-based representation model is proposed to fully exploit the discrimination information embedded in the SLF, and robust regression is adopted to effectively handle the occlusion in face images. Extensive experiments are conducted on benchmark face databases, including extended Yale B, AR (A. Martinez and R. Benavente), multiple pose, illumination, and expression (multi-PIE), facial recognition technology (FERET), face recognition grand challenge (FRGC), and labeled faces in the wild (LFW), which have different variations of lighting, expression, pose, and occlusions, demonstrating the promising performance of the proposed method.
Keywords :
face recognition; feature extraction; groupware; hidden feature removal; image registration; lighting; statistical analysis; visual databases; AR; FERET; FRGC; LFW; SLF; benchmark face databases; collaborative representation-based classification; embedded information discrimination; extended Yale B; face image occlusion; face recognition grand challenge; facial recognition technology; image registration error; kernel- based representation model; labeled faces in the wild; local feature extraction; multiPIE; multipartition max pooling; multiple pose; robust face recognition; robust kernel representation model; statistical local features; Encoding; Face; Feature extraction; Histograms; Kernel; Robustness; Vectors; Collaborative representation; face recognition; robust kernel representation; statistical local feature;