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Improved sparse representation with low-rank representation for robust face recognition

机译:改进的具有低秩表示的稀疏表示,可增强人脸识别能力

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In this paper, an approach to learn a robust sparse representation dictionary for face recognition is proposed. As well known, sparse representation algorithm can effectively tackle slight occlusion problems for face recognition. However, if images are corrupted by heavy noise, performance will be not guaranteed. In this paper, to enhance the robustness of sparse representation to serious noise in face images, we integrate low rank representation into dictionary learning to alleviate the influence of unfavorable factors such as large scale noise and occlusion. Among which we extract eigenfaces by singular value decomposition (SVD) from the low rank pictures to reduce dictionary atoms and, thereby, optimize the efficiency of improved algorithm. Otherwise, we characterize each image using the histogram of orientated gradient (HOG) feature which has been proven to be an effective descriptor for face recognition in particular. The performance of the proposed Low-rank and HOG feature based ESRC (LH_ESRC) algorithm on several popular face databases such as the Extended Yale B database and CMU_PIE face database shows the effectiveness of our method. In addition, we evaluate the robustness of our method by adding different proportions of randomly noise and block occlusion and real disgusts. Experimental results illustrate the benefits of our approach. (C) 2016 Elsevier B.V. All rights reserved.
机译:本文提出了一种用于学习鲁棒的稀疏表示词典的人脸识别方法。众所周知,稀疏表示算法可以有效解决轻微的遮挡问题以进行人脸识别。但是,如果图像被大量噪点破坏,则无法保证性能。在本文中,为了增强稀疏表示对面部图像中严重噪声的鲁棒性,我们将低秩表示集成到字典学习中,以减轻诸如大范围噪声和遮挡等不利因素的影响。其中我们通过奇异值分解(SVD)从低秩图片中提取特征脸以减少字典原子,从而优化改进算法的效率。否则,我们将使用定向梯度直方图(HOG)功能来表征每个图像,这已被证明特别是对于面部识别的有效描述符。所提出的基于低秩和HOG特征的ESRC(LH_ESRC)算法在几种流行的人脸数据库(如扩展Yale B数据库和CMU_PIE人脸数据库)上的性能证明了该方法的有效性。此外,我们通过添加不同比例的随机噪声,块遮挡和真实恶心来评估该方法的鲁棒性。实验结果证明了我们方法的好处。 (C)2016 Elsevier B.V.保留所有权利。

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