会议专题

Face Recognition Based on Improved PCA Reconstruction

A face recognition method based on improved principal components analysis (PCA) reconstruction is proposed. Firstly, PCA algorithm was performed on training samples of each pattern class to calculate the optimal projection transformation matrices. A point that should be mentioned was that we used median vector rather than mean vector in total scatter matrix. The feature vectors of testing sample could be obtained by projecting it on the optimal projection transformation matrices. After that, reconstruction images phase was conducted to get the reconstruction image. Using the same procedure, the reconstruction image of testing image corresponding to each pattern class could be obtained. Finally, the error between reconstruction images and testing sample were calculated, respectively. The testing sample was belonging to the pattern class whose corresponding error was minimal. Experiments on Yale and ORL show that this approach works much better than traditional PCA.

Zhenhai Wang Xiaodong Li

School of Information Linyi Normal University Linyi 276005, China

国际会议

The 8th World Congress on Intelligent Control and Automation(第八届智能控制与自动化世界大会 WCICA 2010)

济南

英文

6272-6276

2010-07-07(万方平台首次上网日期,不代表论文的发表时间)