Normalized Direct Linear Discriminant Analysis with its Application to Face Recognition

Jun Yin, Zhong Jin, Jingbo Zhou
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引用次数: 6

Abstract

The dimensionality of sample is often larger than the number of training samples for highdimensional pattern recognition such as face recognition. Here linear discriminant analysis (LDA) cannot be performed directly because of the singularity of the within-class scatter matrix. This is socalled “small sample size” (SSS) problem. PCA plus LDA (FDA) and Direct LDA (DLDA) are two popular methods to solve the SSS problem of LDA. In this paper, we point out the relationship of these two methods and discuss the deficiency of DLDA. Then a normalized direct linear discriminant analysis (NDLDA) method which overcomes DLDA’s deficiency is proposed. Experiments on ORL, YALE and AR face databases show NDLDA’s superiority over DLDA and FDA.
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归一化直接线性判别分析及其在人脸识别中的应用
在人脸识别等高维模式识别中,样本的维数往往大于训练样本的数量。由于类内散点矩阵的奇异性,不能直接进行线性判别分析(LDA)。这就是所谓的“小样本”(SSS)问题。PCA + LDA (FDA)和Direct LDA (DLDA)是解决LDA的SSS问题的两种常用方法。本文指出了这两种方法的关系,并讨论了DLDA的不足。然后提出了一种归一化直接线性判别分析(NDLDA)方法,克服了DLDA的不足。在ORL、YALE和AR人脸数据库上的实验表明,NDLDA优于DLDA和FDA。
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