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Learning Low-Rank Class-Specific Dictionary and Sparse Intra-Class Variant Dictionary for Face Recognition

机译:学习低秩特定类词典和稀疏类内部变体词典以进行人脸识别

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摘要

Face recognition is challenging especially when the images from different persons are similar to each other due to variations in illumination, expression, and occlusion. If we have sufficient training images of each person which can span the facial variations of that person under testing conditions, sparse representation based classification (SRC) achieves very promising results. However, in many applications, face recognition often encounters the small sample size problem arising from the small number of available training images for each person. In this paper, we present a novel face recognition framework by utilizing low-rank and sparse error matrix decomposition, and sparse coding techniques (LRSE+SC). Firstly, the low-rank matrix recovery technique is applied to decompose the face images per class into a low-rank matrix and a sparse error matrix. The low-rank matrix of each individual is a class-specific dictionary and it captures the discriminative feature of this individual. The sparse error matrix represents the intra-class variations, such as illumination, expression changes. Secondly, we combine the low-rank part (representative basis) of each person into a supervised dictionary and integrate all the sparse error matrix of each individual into a within-individual variant dictionary which can be applied to represent the possible variations between the testing and training images. Then these two dictionaries are used to code the query image. The within-individual variant dictionary can be shared by all the subjects and only contribute to explain the lighting conditions, expressions, and occlusions of the query image rather than discrimination. At last, a reconstruction-based scheme is adopted for face recognition. Since the within-individual dictionary is introduced, LRSE+SC can handle the problem of the corrupted training data and the situation that not all subjects have enough samples for training. Experimental results show that our method achieves the state-of-the-art results on AR, FERET, FRGC and LFW databases.
机译:面部识别具有挑战性,特别是当来自不同人的图像由于光照,表情和遮挡的变化而彼此相似时。如果我们有足够的训练图像,可以在测试条件下跨越该人的面部变化,则基于稀疏表示的分类(SRC)将获得非常可观的结果。但是,在许多应用中,人脸识别经常会遇到由于每个人的可用训练图像数量少而引起的样本量小的问题。在本文中,我们通过利用低秩稀疏错误矩阵分解和稀疏编码技术(LRSE + SC)提出了一种新颖的人脸识别框架。首先,采用低秩矩阵恢复技术将每类人脸图像分解为低秩矩阵和稀疏误差矩阵。每个人的低阶矩阵都是特定于类的字典,它捕获了这个人的区别特征。稀疏误差矩阵表示类内变化,例如光照,表情变化。其次,我们将每个人的低阶部分(代表基础)组合到一个有监督的字典中,并将每个人的所有稀疏错误矩阵整合到一个个体内部的变体字典中,该字典可用于表示测试和测试之间的可能变化。训练图像。然后,使用这两个词典对查询图像进行编码。个体内变体词典可以被所有对象共享,并且仅有助于解释查询图像的照明条件,表情和遮挡,而不是对图像的歧视。最后,采用基于重构的方案进行人脸识别。由于引入了个体内字典,LRSE + SC可以解决训练数据损坏以及并非所有受试者都有足够的样本进行训练的问题。实验结果表明,我们的方法在AR,FERET,FRGC和LFW数据库上达到了最新的结果。

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