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Kernel maximum scatter difference based feature extraction and its application to face recognition

机译:基于核最大散度差异的特征提取及其在人脸识别中的应用

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摘要

This paper formulates maximum scatter difference (MSD) criterion in the kernel-including feature space and develops a two-phase kernel maximum scatter difference criterion: KPCA plus MSD. The proposed method first maps the input data into a potentially much higher dimensional feature space by virtue of nonlinear kernel trick, and in such a way, the problem of feature extraction in the nonlinear space is overcome. Then the scatter difference between between-class and within-class as discriminant criterion is defined on the basis of the above computation; therefore, the singularity problem of the within-class scatter matrix due to small sample size problem occurred in classical Fisher discriminant analysis is avoided. The results of experiments conducted on a subset of FERET database, Yale database indicate the effectiveness of the proposed method.
机译:本文提出了包括特征空间在内的核的最大散射差准则,提出了两阶段的核最大散射差准则:KPCA + MSD。所提出的方法首先借助非线性核技巧将输入数据映射到潜在更高维的特征空间中,从而克服了非线性空间中特征提取的问题。然后在上述计算的基础上,定义了分类间和分类间的差异作为判别准则。因此,避免了经典费舍尔判别分析中由于样本量小的问题而导致的类内散布矩阵的奇异性问题。在FERET数据库(耶鲁数据库)的子集上进行的实验结果表明了该方法的有效性。

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