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应用小指数多项式的KPCA+零空间人脸识别
引用本文:郭恺,付永生,冷严,侯剑.应用小指数多项式的KPCA+零空间人脸识别[J].计算机工程,2006,32(22):203-205.
作者姓名:郭恺  付永生  冷严  侯剑
作者单位:山东大学信号与信息处理研究所,济南,250100
摘    要:利用小指数多项式核主分量分析(KPCA)提取人脸样本的非线性特征,提高对光照、姿态及面部表情变化的鲁棒性,构造训练样本的类内散布矩阵零空间,在此零空间内找到令类间离散度最大的投影方向,往此方向投影得到人脸样本的最优分类特征矢量。实验结果表明;该方法的识别率和对光照、姿态及面部表情变化的鲁棒性比Fisher脸方法有显著提高。

关 键 词:人脸识别  小指数多项式  核主分量分析  零空间
文章编号:1000-3428(2006)22-0203-03
收稿时间:11 17 2005 12:00AM
修稿时间:2005-11-17

Face Recognition Combining Null Space Approach and Kernel PCA Including Fractional Power Polynomial Models
GUO Kai,FU Yongsheng,LENG Yan,HOU Jian.Face Recognition Combining Null Space Approach and Kernel PCA Including Fractional Power Polynomial Models[J].Computer Engineering,2006,32(22):203-205.
Authors:GUO Kai  FU Yongsheng  LENG Yan  HOU Jian
Affiliation:Institute of Signal and Information Processing, Shandong University, Jinan 250100
Abstract:This paper presents a novel KPCA+Null Space method by integrating the kernel PCA method and the null space of the within-class scatter matrix.The kernel PCA method which extends to include fractional power polynomial models first derives nonlinear features of face samples,then this paper constructs the null space of the within-class scatter matrix,and calculates the optimal discriminating vectors by maximizing the between-class distribution,after the projection of the samples onto the optimal discriminating vectors,it can obtain the optimal discriminating feature vectors.The test results show that the KPCA+Null Space method is superior to Fisher face method in terms of recognition accuracy and stability to the variations between the images of the same face due to illumination,expression and viewing direction.
Keywords:Face recognition  Fractional power polynomial models  Kernel principal component analysis(KPCA)  Null space
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