Gabor和非下采样Contourlet变换的局部模式融合人脸识别

Yao Deng, Zhenhua Guo, Youbin Chen
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引用次数: 7

摘要

Gabor特征已被证明是非常有效的面部表征。近年来,非次采样轮廓let变换(NSCT)作为一种基于轮廓let变换的新发展的多分辨率分析工具,也被用于人脸图像处理。实际上,这两种图像分解方法是从两个不同的角度进行的。为了利用这些特征的互补性,本文提出了一种基于Gabor和NSCT的局部模式融合的人脸表示方法。首先,我们分别使用Gabor和NSCT对人脸图像进行分解。然后用局部纹理描述符对分解后的图像进行编码组合。为了提取有效的特征进行特征融合,我们提出了局部Gabor差分特征(LGDF)和局部轮廓let差分特征(LCDF)来表示分解图像的纹理。第三,在融合LGDF和LCDF后,利用基于块的Fisher线性判别法(BFLD)进一步降维,提高方法的判别能力。在公共数据库上的实验表明,所提出的LGDF和LCDF非常有效,并且我们的方法优于许多最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fusing Local Patterns of Gabor and Non-subsampled Contourlet Transform for Face Recognition
Gabor features have been demonstrated to be very effective for face representation. Recently, non-sub sampled contour let transform (NSCT), which is a newly developed multi-resolution analysis tool based on contour let transform, is also used in facial image processing. In fact, the two image decomposition methods are performed from two different angles. To exploit complementarity of these features, in this paper, we propose a new face representation based on fusing local patterns of Gabor and NSCT. Firstly, we decompose face images using Gabor and NSCT respectively. Then all decomposition images are encoded by local texture descriptors to combine. In order to extract efficient features for feature fusion, we propose local Gabor difference features (LGDF) and local contour let difference features (LCDF) to represent the texture of decomposition images. Thirdly, after fusing LGDF and LCDF, block-based Fisher's linear discriminant (BFLD) is utilized to further reduce the dimensionality and improve discriminative power of the proposed method. Experiments on public databases demonstrate that the proposed LGDF and LCDF are very effective and our approach outperforms many state-of-the-art methods.
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