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Representations of Face Images and Collaborative Representation Classification for Face Recognition

机译:人脸图像的表示和人脸识别的协同表示分类

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摘要

Collaborative representation classification (CRC) was firstly proposed by Zhang et al. [L. Zhang, M. Yang, X. Feng, Y. Ma and D. Zhang, Collaborative Representation based Classification for Face Recognition, Computer Science, 2014]. It was an excellent algorithm for solving face recognition problems. The method suggests that the combination of all original training samples can approach the test samples accurately. But in fact, this does not mean it can well solve complex face recognition problems in some special situation, such as face recognition with varying illuminations and facial expressions. In the paper, we proposed an improvement to previous CRC method. By using a dedicated algorithm to combine the linear combinations of the original and their mirror training samples to represent the test samples, we can get more accurate recognition of test samples. The experimental results show that the proposed method does obtain notable accuracy improvement in comparison with the previous method.
机译:张等人首先提出了协同表示分类法(CRC)。 [L.张明阳,X峰,冯玉梅,张丹,基于协同表示的人脸识别分类,计算机科学,2014年。这是解决人脸识别问题的出色算法。该方法表明,所有原始训练样本的组合都可以准确地接近测试样本。但是实际上,这并不意味着它可以很好地解决某些特殊情况下的复杂人脸识别问题,例如具有变化的光照和面部表情的人脸识别。在本文中,我们提出了对以前的CRC方法的改进。通过使用专用算法来组合原始样本和镜像训练样本的线性组合以表示测试样本,我们可以更准确地识别测试样本。实验结果表明,与以前的方法相比,该方法确实获得了明显的精度提高。

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