首页 | 本学科首页   官方微博 | 高级检索  
     检索      

基于2DPCA和改进的LDA算法的人脸识别技术
引用本文:施志刚,姜彬.基于2DPCA和改进的LDA算法的人脸识别技术[J].南通职业大学学报,2009,23(3):88-92.
作者姓名:施志刚  姜彬
作者单位:南通航运职业技术学院,管理信息系,江苏,南通,226010
摘    要:为提高人脸识别的准确率,缩短图像特征提取的时间,提出了一种将二维主成分分析(简称2DPCA)与改进的线性鉴别分析(简称LDA)相结合的人脸识别方法。该法首先以图像矩阵为分析对象,直接利用原始图像矩阵构造图像的协方差矩阵。以进行特征提取和2DPCA分析;再采用改进的线性鉴别分析。得到最佳的分类特征,从理论上有效解决了传统的线性鉴别分析在人脸识别中存在的“边缘类”问题:最后.在ORL人脸库上检验了该识别方法的性能。实验结果表明,该方法抽取的鉴别特征有较强的鉴别能力。

关 键 词:二维主成分分析  线性鉴别分析  协方差矩阵  特征提取  主成分分析  边缘类  人脸识别

Face Recognition Based on 2DPCA and Improved Linear Discrimination Analysis
SHI Zhi-gang,JIANG Bin.Face Recognition Based on 2DPCA and Improved Linear Discrimination Analysis[J].Journal of Nantong Vocational College,2009,23(3):88-92.
Authors:SHI Zhi-gang  JIANG Bin
Institution:(Department of Management and Information, Nantong Vocational & Technical Shipping College, Nantong 226010, China)
Abstract:A human face recognition technique based on Two-Dimension Principal Component Analysis (2DPCA) and Linear Discrimination Analysis is presented. With this method, first, the original image matrix is directly utilized to construct covariance matrix for feature extraction. Compared with Principal Component Analysis (PCA), it not only improves correct recognition rate in face recognition, but also reduces much more time in feature extraction; and then a improved Linear Discrimination Analysis is applied to obtain classification feature. This improved method gives an effective way to resolve the "edge of class" problem of the traditional Linear Discrimination Analysis theoretically in face recognition. Finally, extensive experiments performed on ORL face database verifies the effectiveness of the proposed method based on 2DPCA and improved Linear Discrimination Analysis.
Keywords:2DPCA  Linear Discrimination Analysis  covariance matrix  feature extraction  PCA  edge of class  face recognition
本文献已被 维普 万方数据 等数据库收录!
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号