DocumentCode :
231868
Title :
Semi-supervised dimensionality reduction based on kernel marginal fisher analysis and sparsity preserving
Author :
Wei Xue ; Zheng-qun Wang ; Feng Li ; Zhong-xia Zhou
Author_Institution :
Dept. of Inf. & Eng., Yang zhou Univ., Yangzhou, China
fYear :
2014
fDate :
28-30 July 2014
Firstpage :
4631
Lastpage :
4635
Abstract :
Considering the limit that marginal fisher analysis(MFA) can´t take advantage of the discriminant information in the training samples, this paper proposed a semi-supervised dimensionality reduction based on kernel marginal fisher analysis and sparsity preserving. The new algorithm firstly gets the sparse reconstruction of the samples. Secondly it uses the samples with labels to construct the intra-class `similarity´ graph and inter-class `penalty´ graph. Then the algorithm uses all of the samples to get the global information. At last, we make it nonlinearized. The algorithm takes advantage of the information in both the label samples and unlabel samples. Experiments with the proposed algorithm were conducted on YALE and ORL, our algorithm outperforms based on traditional dimensionality reduction algorithms with maximum average recognition rate by 2.48% and 4.88% respectively.
Keywords :
face recognition; graph theory; image reconstruction; MFA; ORL; YALE; face recognition; global information; interclass penalty graph; intra-class similarity graph; kernel marginal fisher analysis; sample sparse reconstruction; semisupervised dimensionality reduction; sparsity preserving; Algorithm design and analysis; Classification algorithms; Face; Face recognition; Kernel; Principal component analysis; Training; MFA; face recognition; semi-supervised learning; sparsity;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Control Conference (CCC), 2014 33rd Chinese
Conference_Location :
Nanjing
Type :
conf
DOI :
10.1109/ChiCC.2014.6895719
Filename :
6895719
Link To Document :
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