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Sparse representation via multi-feature based Fisher Discrimination Dictionary Learning

机译:通过基于多功能的Fisher判别词典学习进行稀疏表示

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In this paper, we propose a multi-feature based sparse representation method named multi-feature Fisher Discrimination Dictionary Learning (MFDDL) and apply it to face recognition. In the new proposed method, firstly, to extract the texture information, multi-scales and multi-orientations Gabor Wavelet Transform is proposed for feature representation. Then the local characteristics of the face Gabor feature is future enhanced by multi-block rotation invariant LBP, which extracts statistically-significant histogram feature and meanwhile, reduces the dimension of the extracted Gabor features. Finally, the Fisher Discrimination Dictionary Learning is utilized to achieve face recognition. Experimental results on the AR face database show that the proposed method can effectively overcome the effect of light variation and occlusion, and can improve the face image recognition performance.
机译:在本文中,我们提出了一种基于多特征的稀疏表示方法,称为多特征费舍尔歧视字典学习(MFDDL),并将其应用于人脸识别。在新提出的方法中,首先,为了提取纹理信息,提出了多尺度和多方向的Gabor小波变换来进行特征表示。然后通过多块旋转不变LBP进一步增强人脸Gabor特征的局部特征,该LBP提取具有统计意义的直方图特征,同时减小提取的Gabor特征的维数。最后,利用Fisher歧视字典学习来实现人脸识别。在AR人脸数据库上的实验结果表明,该方法可以有效克服光线变化和遮挡的影响,并可以提高人脸图像的识别性能。

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