会议专题

Nuclear Norm Based Superposed Collaborative Representation Classifier for Robust Face Recognition

  In this paper,we propose a novel robust face recognition framework named nuclear norm based superposed collaborative representation classifier(NNSCRC)to handle illumination variations,occlusion and undersampled problems in face recognition.Specifically,we develop a superposed linear collaborative representation classifier for robust face recognition by representing the query image in terms of a superposition of the class centroid,the shared intra-class difference,and the low rank error.By representing a face image as the class centroid and the shared intra-class difference,our model can effectively enhance the face recognition performance on undersampled databases.In addition,since the occlusion and illumination variations generally lead to a low-rank error image,we use nuclear norm matrix regression to obtain these lowrank errors,which makes our model able to reconstruct the test image better.Extensive experiments are performed on Extended Yale-B and AR databases,which show the effectiveness of NNSCRC in robust face recognition.

Robust face recognition Nuclear norm Superposed collaborative representation

Yongbo Wu Haifeng Hu

School of Electronics and Information Technology,Sun Yat-Sen University,Guangzhou,China

国际会议

中国模式识别与计算机视觉大会(PRCV2018)

广州

英文

219-232

2018-11-23(万方平台首次上网日期,不代表论文的发表时间)