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A face recognition method based on residual image representation and feature extraction

机译:基于残差图像表示和特征提取的人脸识别方法

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摘要

To address the problem of non-well controlled face recognition, such as illumination changes, pose variation and random pixel corruption, we propose a robust face recognition method based on representation and feature extraction of residual images. Represented by sparse representation and linear regression, linear representation methods typically use training samples to represent and reconstruct test samples, and determine classification results according to the distance between test samples and reconstruction samples. In this paper, we consider to use linear regression to obtain reconstruction samples of the test sample with respect to each subject, and compute residual images by the difference between test sample and reconstruction samples. Then we analyze intensity distribution of residual images between the correct subject and other subjects, and adopt intensity transform to surpass the intra-class difference and strengthen the inter-class difference. Finally, we use wavelet decomposition to extract global intensity distribution of residual images, and introduce information entropy to illustrate the uncertainty of intensity distribution, which are extracted as discriminating features. Compared with several popular face recognition methods, the efficacy of the proposed method is verified on four popular face databases (i.e., ORL, Extended Yale B, Georgia Tech and AR) with promising results.
机译:为了解决诸如光照变化,姿态变化和随机像素破坏等人眼控制不善的问题,我们提出了一种基于残差图像表示和特征提取的鲁棒人脸识别方法。线性表示方法以稀疏表示和线性回归表示,通常使用训练样本来表示和重构测试样本,并根据测试样本和重构样本之间的距离确定分类结果。在本文中,我们考虑使用线性回归来获得每个受试者的测试样本的重构样本,并通过测试样本与重构样本之间的差异来计算残差图像。然后,分析了正确的被摄对象与其他被摄对象之间的残差图像强度分布,并采用强度变换来超越类内差异,增强类间差异。最后,利用小波分解提取残差图像的整体强度分布,并引入信息熵来说明强度分布的不确定性,并将其提取为识别特征。与几种流行的人脸识别方法相比,该方法在四个流行的人脸数据库(即ORL,Extended Yale B,Georgia Tech和AR)上的有效性得到了验证。

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