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Face Recognition Based on Circularly Symmetrical Gabor Transforms and Collaborative Representation

机译:基于循环对称的Gabor变换和协作表示的人脸识别

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Compared to the traditional Gabor transform, the circularly symmetrical Gabor transform (CSGT) not only retains the characteristics of local and multi-resolution analysis, but also has the remarkable advantages of less redundancy and rotational invariance. Simultaneously, the collaborative representation-based classification with regularized least square (CRC-RLS) overcomes the shortcoming of the high computational complexity in the sparse representation-based classification (SRC). However, both classification algorithms still use the global features of the image, ignoring the importance of local features in the face images. In this paper, the face images are first mapped onto the CSGT domain, and then the amplitude images are chosen as the sample images. Finally, CRC is used to classify different faces. The experimental results on AR, FERET and Extended Yale B face databases show that the proposed algorithm achieves higher recognition rates and better robustness.
机译:与传统的Gabor变换相比,循环对称的Gabor变换(CSGT)不仅保留了本地和多分辨率分析的特征,而且还具有较差冗余和旋转不变性的显着优势。同时,基于协作表示的分类与规则的最小二乘(CRC-RLS)克服了基于稀疏表示的分类(SRC)中的高计算复杂度的缺点。但是,两个分类算法仍然使用图像的全局特征,忽略面部图像中的本地特征的重要性。在本文中,面部图像首先映射到CSGT域,然后选择幅度图像作为样本图像。最后,CRC用于对不同的面进行分类。 AR,FERET和延伸的耶鲁B脸数据库的实验结果表明,该算法达到了更高的识别率和更好的鲁棒性。

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