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图像特征抽取的奇异值分解方法
引用本文:王文胜,杨静宇,陈伏兵.图像特征抽取的奇异值分解方法[J].计算机工程,2006,32(8):32-33,36.
作者姓名:王文胜  杨静宇  陈伏兵
作者单位:1. 南京理工大学计算机系,南京,210094;中电第28研究所,南京,210007
2. 南京理工大学计算机系,南京,210094
摘    要:传统的PCA方法和LDA方法扯处理图像识别问题时,一般先将图像矩阵转化为图像向量,然后以该图像向量作为原始特征进行特征抽取。近来一些研究人员提出利用图像矩阡瓿接构造敞布矩阵,并存此基础上进行特征抽取的方法。该文在该思想的基础上,提出了IMSVD方法。该方法没有采用PCA或LDA方法,而是利用奇肄值分解方法进行特征抽取。对ORL人脸阁像的识别试验结果表明,IMSVD订法具有良好的特征抽取性能。

关 键 词:图像识别  特征抽取  线性鉴别分析  主分量分析  奇异值分解  人脸识别
文章编号:1000-3428(2006)08-0032-02
收稿时间:2005-04-29
修稿时间:2005-04-29

Method of Image Feature Extraction Based on SVD
WANG Wensheng,YANG Jingyu,CHEN Fubing.Method of Image Feature Extraction Based on SVD[J].Computer Engineering,2006,32(8):32-33,36.
Authors:WANG Wensheng  YANG Jingyu  CHEN Fubing
Abstract:Feature extraction is primary problem of image recognition. PCA and LDA are two classic methods applied widely in the field of image recognition. But they are both based on image vector in image recognition. Recently some researchers propose new methods which are based on image matrix, This paper proposes a new method called IMSVD. Based on the balanced scatter matrix. a discriminant criteria is formed, The optimal set of discliminant vectors can be acquired through singular value decomposition theorem. The result of face recognition experiment shows that it has powerful ability of feature extraction.
Keywords:Image recognition  Feature extraction  Linear discriminant analysis  Principal component analysis  Singular value decomposition  Face recognition
本文献已被 CNKI 维普 万方数据 等数据库收录!
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