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A novel deep learning algorithm for incomplete face recognition: Low-rank-recovery network

机译:一种新的不完整面部识别深层学习算法:低级恢复网络

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Abstract There have been a lot of methods to address the recognition of complete face images. However, in real applications, the images to be recognized are usually incomplete, and it is more difficult to realize such a recognition. In this paper, a novel convolution neural network frame, named a low-rank-recovery network (LRRNet), is proposed to conquer the difficulty effectively inspired by matrix completion and deep learning techniques. The proposed LRRNet first recovers the incomplete face images via an approach of matrix completion with the truncated nuclear norm regularization solution, and then extracts some low-rank parts of the recovered images as the filters. With these filters, some important features are obtained by means of the binaryzation and histogram algorithms. Finally, these features are classified with the classical support vector machines (SVMs). The proposed LRRNet method has high face recognition rate for the heavily corrupted images, especially for the images in the large databases. The proposed LRRNet performs well and efficiently for the images with heavily corrupted, especially in the case of large databases. Extensive experiments on several benchmark databases demonstrate that the proposed LRRNet performs better than some other excellent robust face recognition methods.
机译:摘要已经有很多方法来解决完整面部图像的识别。然而,在实际应用中,要识别的图像通常是不完整的,并且更难以实现这种识别。本文提出了一种名为低秩恢复网络(LRRNET)的新型卷积神经网络帧,以征服矩阵完成和深度学习技术有效启发的困难。所提出的LRRNET首先通过与截短的核规范正则化解决方案的矩阵完成方法恢复不完全面部图像,然后将恢复图像的一些低秩部分作为滤波器提取。利用这些滤波器,通过Binaryzation和直方图算法获得了一些重要特征。最后,这些特征分为古典支持向量机(SVM)。所提出的LRRNET方法具有较高的损坏图像的面部识别率,特别是对于大型数据库中的图像。建议的LRRNET对具有严重损坏的图像进行良好,有效地表现良好,特别是在大型数据库的情况下。在几个基准数据库上进行了广泛的实验表明,所提出的LRRNET比其他一些优秀的强大面部识别方法更好地执行。

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