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Abstract

Null space based linear discriminant analysis (NSLDA) is a well-known feature extraction method, which can make use of the most discriminant information in the null space of within-class scatter matrix. However, the conventional formulation of NSLDA is based on L2-norm which makes NSLDA be sensitive to outlier. To address the problem of NSLDA, in this paper, we propose a simple and robust NSLDA based on L1-norm (L1-NSLDA). An iterative algorithm for solving L1-NSLDA is also proposed. Compared to NSLDA, L1-NSLDA is more robust than NSLDA since it is more robust to outliers and noise. Experiment results on some image databases confirm the effectiveness of the proposed L1-NSLDA.

Details

Title
L1-norm based null space discriminant analysis
Author
Gui-Fu, Lu 1 ; Zou, Jian 1 ; Wang, Yong 1 ; Wang, Zhongqun 1 

 School of Computer and Information, AnHui Polytechnic University, WuHu, AnHui, China 
Pages
15801-15816
Publication year
2017
Publication date
Jul 2017
Publisher
Springer Nature B.V.
ISSN
13807501
e-ISSN
15737721
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
2085587475
Copyright
Multimedia Tools and Applications is a copyright of Springer, (2016). All Rights Reserved.