This paper presents a novel sparse representation for robust face recognition. We advance both group sparsity and data locality and formulate a unified optimization framework, which produces a locality and group sensitive sparse representation (LGSR) for improved recognition. Empirical results confirm that our LGSR not only outperforms state-of-the-art sparse coding based image classification methods, our approach is robust to variations such as lighting, pose, and facial details (glasses or not), which are typically seen in real-world face recognition problems.
Meng HuangGuifang ShaoKeqi WangTun-Dong LiuHao Lü
Xi PengLei ZhangYi ZhangKok Kiong Tan
Yu‐Chen ChenShintami Chusnul HidayatiWen-Huang ChengMin‐Chun HuKai‐Lung Hua
Jianzhong WangYugen YiWei ZhouYanjiao ShiMiao QiMing ZhangBaoxue ZhangJun Kong