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Classwise Sparse and Collaborative Patch Representation for Face Recognition

机译:人脸识别的类稀疏和协同补丁表示

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Sparse representation has shown its merits in solving some classification problems and delivered some impressive results in face recognition. However, the unsupervised optimization of the sparse representation may result in undesired classification outcome if the variations of the data population are not well represented by the training samples. In this paper, a method of class-wise sparse representation (CSR) is proposed to tackle the problems of the conventional sample-wise sparse representation and applied to face recognition. It seeks an optimum representation of the query image by minimizing the class-wise sparsity of the training data. To tackle the problem of the uncontrolled training data, this paper further proposes a collaborative patch (CP) framework, together with the proposed CSR, named CSR-CP. Different from the conventional patch-based methods that optimize each patch representation separately, the CSR-CP approach optimizes all patches together to seek a CP groupwise sparse representation by putting all patches of an image into a group. It alleviates the problem of losing discriminative information in the training data caused by the partition of the image into patches. Extensive experiments on several benchmark face databases demonstrate that the proposed CSR-CP significantly outperforms the sparse representation-related holistic and patch-based approaches.
机译:稀疏表示法在解决一些分类问题方面显示出其优点,并在人脸识别方面取得了令人印象深刻的结果。但是,如果训练样本不能很好地表示数据总体的变化,则稀疏表示的无监督优化可能会导致不良的分类结果。本文提出了一种基于类的稀疏表示(CSR)方法来解决传统的基于样本的稀疏表示的问题并将其应用于人脸识别。它通过最小化训练数据的类稀疏性来寻找查询图像的最佳表示。为了解决训练数据不受控制的问题,本文进一步提出了一个协作补丁(CP)框架,并提出了一个名为CSR-CP的CSR。与传统的基于补丁的方法不同,传统的基于补丁的方法分别优化每个补丁表示,CSR-CP方法将所有补丁优化在一起,以通过将图像的所有补丁放入一个组来寻求CP分组稀疏表示。它减轻了由于将图像划分为块而导致的丢失训练数据中的区分信息的问题。在几个基准面部数据库上进行的大量实验表明,所提出的CSR-CP明显优于稀疏表示相关的整体方法和基于补丁的方法。

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