Two Dimensional Principle Component Analysis of Gabor features for face representation and recognition

R. Mutelo, W. L. Woo, S. Dlay
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引用次数: 3

Abstract

In this paper, a new technique called two dimensional Gabor principle component analysis (2DGPCA) is derived and implemented for image representation and recognition. The 2DGPCA method addresses the problems of feature extraction, feature selection and classification. In this approach, the Gabor wavelets are used to extract facial features. The principle component analysis (PCA) is then applied directly on the Gabor transformed image matrices in order to remove redundant information and form an efficient representation more suitable for face recognition. During classification, the Euclidean classifier is explored for simplicity and robustness in the presence of facial variations. The justification behind combining the 2D Gabor wavelets and the PCA is that Gabor transformed face images contain spatial locality, scale and orientation. These images are robust to variations due to pose, expression and scale, thus, making them most suitable for face representation and recognition. The proposed 2DGPCA method was tested on face recognition using the ORL database, where the images vary in expression, pose, and scale. In particular, the 2DGPCA method achieves 97.5% face recognition accuracy when using feature matrices of size 40times5times1 incorporating 5 different scales and 8 orientations compare to 93.5% and 94.5% with feature matrices of size 56times8 and 56times6 for the 2DPCA and 2DFLD method.
基于Gabor特征的二维主成分分析
本文提出并实现了一种用于图像表示和识别的二维Gabor主成分分析(2DGPCA)技术。2DGPCA方法解决了特征提取、特征选择和分类问题。该方法采用Gabor小波提取人脸特征。然后将主成分分析(PCA)直接应用于Gabor变换后的图像矩阵,以去除冗余信息,形成更适合人脸识别的高效表示。在分类过程中,欧几里得分类器探索了在面部变化存在下的简单性和鲁棒性。将二维Gabor小波与PCA相结合的理由是,Gabor变换后的人脸图像包含空间局域性、尺度和方向。这些图像对姿势、表情和比例的变化具有鲁棒性,因此最适合用于面部表示和识别。使用ORL数据库对所提出的2DGPCA方法进行了人脸识别测试,其中图像在表情,姿势和比例上有所不同。特别是,2DGPCA方法在使用包含5个不同尺度和8个方向的40times5times1大小的特征矩阵时,人脸识别准确率达到97.5%,而2DPCA和2DFLD方法在使用56times8和56times6大小的特征矩阵时,准确率分别为93.5%和94.5%。
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