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Learning in multimodal and mixmodal data: locality preserving discriminant analysis with kernel and sparse representation techniques
Zhang, Qi ; Chu, Tianguang
刊名MULTIMEDIA TOOLS AND APPLICATIONS
2017
关键词Multimodal and mixmodal data Feature extraction Kernel theory Sparse representation FACE RECOGNITION IMAGE PROJECTIONS
DOI10.1007/s11042-016-3848-6
英文摘要We consider the problem of feature extraction for "multimodal" and "mixmodal" data. A new supervised learning method called locality preserving discriminant analysis (LPDA) is presented, which aims to maximize the weighted between-class distances and minimize the locality-preserved within-class distances. By introducing a specific affinity matrix for each class, LPDA can better preserve the local geometric structure of the samples within it, and thus efficiently derive nonlinear characters of the data structure. Meanwhile, by using the defined between-class weight matrix, LPDA also preserves the interrelation information of data from different classes. This facilitates the separation of between-class data. We further extend LPDA to kernel-LPDA and sparse-LPDA by taking advantage of theories of kernel technique and sparse representation. Experiments for data classification, handwriting and face recognition are carried out to verify the feasibility and effectiveness of the proposed approaches.; NSFC [61273111]; National Basic Research Program of China (973 Program) [2012CB821200]; SCI(E); ARTICLE; 14; 15465-15489; 76
语种英语
内容类型期刊论文
源URL[http://ir.pku.edu.cn/handle/20.500.11897/472462]  
专题工学院
推荐引用方式
GB/T 7714
Zhang, Qi,Chu, Tianguang. Learning in multimodal and mixmodal data: locality preserving discriminant analysis with kernel and sparse representation techniques[J]. MULTIMEDIA TOOLS AND APPLICATIONS,2017.
APA Zhang, Qi,&Chu, Tianguang.(2017).Learning in multimodal and mixmodal data: locality preserving discriminant analysis with kernel and sparse representation techniques.MULTIMEDIA TOOLS AND APPLICATIONS.
MLA Zhang, Qi,et al."Learning in multimodal and mixmodal data: locality preserving discriminant analysis with kernel and sparse representation techniques".MULTIMEDIA TOOLS AND APPLICATIONS (2017).
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