Title
Kernel locality-constrained collaborative representation based discriminant analysis.
Abstract
Collaborative representation based classifier (CRC) has been successfully applied to pattern classification. However, CRC may not be able to identify the data with highly nonlinear distribution as a linear algorithm. In this paper, we first propose a kernel locality-constrained collaborative representation based classifier (KLCRC). KLCRC is a nonlinear extension of CRC, and it introduces the local structures of data sets into collaborative representation methods. Since the kernel feature space has a very high (or possibly infinite) dimensionality, we present a dimensionality reduction method (termed kernel locality-constrained collaborative representation based discriminant analysis, KLCR-DA) which can fit KLCRC well. KLCR-DA seeks a subspace in which the between-class reconstruction residual of a given data set is maximized and the within-class reconstruction residual is minimized. Hence, KLCRC can achieve better performances in the projected space. Extensive experimental results on AR, the extended Yale B, FERET face image databases and HK PloyU palmprint database show the superiority of KLCR-DA in comparison to the related methods.
Year
DOI
Venue
2014
10.1016/j.knosys.2014.06.027
Knowledge-Based Systems
Keywords
Field
DocType
Feature extraction,Sparse representation,Collaborative representation,Local structures,Kernel methods
Data mining,Dimensionality reduction,Computer science,Artificial intelligence,Kernel (linear algebra),Feature vector,Pattern recognition,Kernel embedding of distributions,Kernel Fisher discriminant analysis,Feature extraction,Linear discriminant analysis,Kernel method,Machine learning
Journal
Volume
Issue
ISSN
70
C
0950-7051
Citations 
PageRank 
References 
10
0.46
22
Authors
4
Name
Order
Citations
PageRank
Lai Wei1508.08
Feifei Xu2765.25
Jun Yin3296.89
Aihua Wu4362.47