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二维投影与PCA相结合的人脸识别算法
引用本文:张生亮,杨静宇.二维投影与PCA相结合的人脸识别算法[J].计算机工程,2006,32(16):165-166.
作者姓名:张生亮  杨静宇
作者单位:南京理工大学计算机科学系,南京,210094
基金项目:国家高技术研究发展计划(863计划)
摘    要:传统的特征抽取算法是基于向量的,在模式是图像时并不方便。二维投影方法利用图像矩阵直接计算,虽然抽取特征速度快,但抽取出的特征是矩阵,对应的特征数量大,影响分类速度。该文结合二者的优点,先用二维投影处理原始图像,降维后再做主分量分析,抽取出少量的特征进行分类,识别率和分类速度均有提高。在ORL人脸库上20次实验的平均识别率达95.83%。

关 键 词:特征抽取  人脸识别  主分量分析
文章编号:1000-3428(2006)16-0165-02
收稿时间:2005-10-13
修稿时间:2005-10-13

Face Recognition of Combining Two Dimensional Projection with PCA
ZHANG Shengliang,YANG Jingyu.Face Recognition of Combining Two Dimensional Projection with PCA[J].Computer Engineering,2006,32(16):165-166.
Authors:ZHANG Shengliang  YANG Jingyu
Affiliation:Department of Computer Science, Nanjing University of Science & Technology, Nanjing 210094
Abstract:Traditional algebraic feature extraction approachs are based on vector patterns.When patterns are not vectors such as facial images,these methods may meet many problems.Recently two-dimension PCA(2DPCA) can directly compute the features by using original image matrixes.But the features extracted by 2DPCA are also matrixes;it could cause the magnitude of features too much and slow down the classification speed.This paper combines the virtues of 2DPCA and PCA,presents a 2DPCA plus PCA feature extraction method.It firstly use 2DPCA to deal with the original image matrixes,and then uses PCA to compress the feature matrixes again.The experiments on ORL face database indicate that the 20 times average recognition rates are respectively PCA(94.98%),2DPCA(95.48%) and 2DPCA+PCA(95.83%).
Keywords:Feature extraction  Face recognition  Principal component analysis(PCA)
本文献已被 CNKI 维普 万方数据 等数据库收录!
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