Kernel Uncorrelated Adjacent-class Discriminant Analysis

Xiaoyuan Jing, Sheng Li, Yong-Fang Yao, Lu-Sha Bian, Jing-yu Yang
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引用次数: 4

Abstract

In this paper, a kernel uncorrelated adjacent-class discriminant analysis (KUADA) approach is proposed for image recognition. The optimal nonlinear discriminant vector obtained by this approach can differentiate one class and its adjacent classes, i.e., its nearest neighbor classes, by constructing the specific between-class and within-class scatter matrices in kernel space using the Fisher criterion. In this manner, KUADA acquires all discriminant vectors class by class. Furthermore, KUADA makes every discriminant vector satisfy locally statistical uncorrelated constraints by using the corresponding class and part of its most adjacent classes. Experimental results on the public AR and CAS-PEAL face databases demonstrate that the proposed approach outperforms several representative nonlinear discriminant methods.
核不相关邻接类判别分析
提出了一种核不相关邻接类判别分析(KUADA)方法用于图像识别。该方法利用Fisher准则在核空间中构造特定的类间散点矩阵和类内散点矩阵,得到的最优非线性判别向量可以区分一个类及其相邻类,即最近邻类。通过这种方式,KUADA逐类获取所有的判别向量。此外,KUADA利用相应的类及其最邻近类的一部分,使每个判别向量满足局部统计不相关约束。在公共AR和CAS-PEAL人脸数据库上的实验结果表明,该方法优于几种具有代表性的非线性判别方法。
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