In this paper we address the problem of illumination invariant face recognition. Using a fundamental concept that in general, patterns from a single object class lie on a linear subspace, we develop a linear model representing a probe image as a linear combination of class-specific galleries. In the presence of noise, the well-conditioned inverse problem is solved using the robust Huber estimation and the decision is ruled in favor of the class with the minimum reconstruction error. The proposed Robust Linear Regression Classification (RLRC) algorithm is extensively evaluated for two standard databases and has shown good performance index compared to the state-of-art robust approaches.
Naseem, ImranTogneri, RobertoBennamoun, Mohammed
Imran NaseemRoberto TogneriMohammed Bennamoun
Jiaqi BaoJianglin LuZhihui LaiNing LiuYuwu Lu
Yanqing GuoRan HeWei‐Shi ZhengXiangwei KongZhaofeng He