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Sparse Graph Based Deep Learning Networks for Face Recognition

机译:基于稀疏图的深度学习网络用于人脸识别

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In recent years, deep learning based approaches have substantially improved the performance of face recognition. Most existing deep learning techniques work well, but neglect effective utilization of face correlation information. The resulting performance loss is noteworthy for personal appearance variations caused by factors such as illumination, pose, occlusion, and misalignment. We believe that face correlation information should be introduced to solve this network performance problem originating from by intra-personal variations. Recently, graph deep learning approaches have emerged for representing structured graph data. A graph is a powerful tool for representing complex information of the face image. In this paper, we survey the recent research related to the graph structure of Convolutional Neural Networks and try to devise a definition of graph structure included in Compressed Sensing and Deep Learning. This paper devoted to the story explain of two properties of our graph - sparse and depth. Sparse can be advantageous since features are more likely to be linearly separable and they are more robust. The depth means that this is a multi-resolution multi-channel learning process. We think that sparse graph based deep neural network can more effectively make similar objects to attract each other, the relative, different objects mutually exclusive, similar to a better sparse multi-resolution clustering. Based on this concept, we propose a sparse graph representation based on the face correlation information that is embedded via the sparse reconstruction and deep learning within an irregular domain. The resulting classification is remarkably robust. The proposed method achieves high recognition rates of 99.61% (94.67%) on the benchmark LFW (YTF) facial evaluation database.
机译:近年来,基于深度学习的方法已大大改善了人脸识别的性能。现有的大多数深度学习技术都可以很好地工作,但是却忽略了人脸相关信息的有效利用。对于由于诸如照明,姿势,遮挡和未对准等因素引起的个人外观变化,由此引起的性能损失值得注意。我们认为,应该引入人脸相关信息来解决此网络性能问题,该问题源于人际差异。最近,出现了用于表示结构化图数据的图深度学习方法。图形是用于表示面部图像的复杂信息的强大工具。在本文中,我们调查了与卷积神经网络图结构有关的最新研究,并试图设计出包含在压缩感知和深度学习中的图结构的定义。本文专门针对这个故事解释了图形的两个属性-稀疏和深度。稀疏是有利的,因为特征更可能是线性可分离的,并且它们更健壮。深度意味着这是一个多分辨率多通道学习过程。我们认为,基于稀疏图的深度神经网络可以更有效地使相似的对象相互吸引,相对的不同对象互斥,类似于更好的稀疏多分辨率聚类。基于此概念,我们提出了一种基于人脸相关性信息的稀疏图表示,该信息通过稀疏重构和深度学习在不规则域内嵌入。所得分类非常可靠。所提出的方法在基准LFW(YTF)面部评估数据库上实现了99.61%(94.67%)的高识别率。

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