Gabor Wavelet Based Modular PCA Approach for Expression and Illumination Invariant Face Recognition

Neeharika Gudur, V. Asari
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引用次数: 28

Abstract

A Gabor wavelet based modular PCA approach for face recognition is proposed in this paper. The proposed technique improves the efficiency of face recognition, under varying illumination and expression conditions for face images when compared to traditional PCA techniques. In this algorithm the face images are divided into smaller sub-images called modules and a series of Gabor wavelets at different scales and orientations are applied on these localized modules for feature extraction. A modified PCA approach is then applied for dimensionality reduction. Due to the extraction of localized features using Gabor wavelets, the proposed algorithm is expected to give improved recognition rate when compared to other traditional techniques. The performance of the proposed technique is evaluated under conditions of varying illumination, expression and variation in pose up to a certain range using standard face databases.
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基于Gabor小波的模主成分分析方法用于表情和光照不变人脸识别
提出了一种基于Gabor小波的模块化PCA人脸识别方法。与传统的PCA技术相比,该技术提高了人脸图像在不同光照和表情条件下的识别效率。该算法将人脸图像划分为更小的子图像模块,并在这些局部化的模块上应用一系列不同尺度和方向的Gabor小波进行特征提取。然后应用改进的PCA方法进行降维。由于使用Gabor小波提取局部特征,与其他传统技术相比,该算法有望提高识别率。利用标准人脸数据库,在一定范围内的光照、表情和姿态变化条件下,评估了该技术的性能。
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