Improved discriminate analysis for high-dimensional data and its application to face recognition

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摘要

Many pattern recognition applications involve the treatment of high-dimensional data and the small sample size problem. Principal component analysis (PCA) is a common used dimension reduction technique. Linear discriminate analysis (LDA) is often employed for classification. PCA plus LDA is a famous framework for discriminant analysis in high-dimensional space and singular cases. In this paper, we examine the theory of this framework and find out that even if there is no small sample size problem the PCA dimension reduction cannot guarantee the subsequent successful application of LDA. We thus develop an improved discriminate analysis method by introducing an inverse Fisher criterion and adding a constrain in PCA procedure so that the singularity phenomenon will not occur. Experiment results on face recognition suggest that this new approach works well and can be applied even when the number of training samples is one per class.

论文关键词:Linear discriminant analysis,Principal component analysis,Small sample size problem,Feature extraction,Face recognition

论文评审过程:Received 17 October 2005, Revised 16 April 2006, Accepted 20 November 2006, Available online 28 December 2006.

论文官网地址:https://doi.org/10.1016/j.patcog.2006.11.015