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Locality Constrained Joint Dynamic Sparse Representation for Local Matching Based Face Recognition

机译:基于局部匹配的人脸识别中的局域约束联合动态稀疏表示

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摘要

Recently, Sparse Representation-based Classification (SRC) has attracted a lot of attention for its applications to various tasks, especially in biometric techniques such as face recognition. However, factors such as lighting, expression, pose and disguise variations in face images will decrease the performances of SRC and most other face recognition techniques. In order to overcome these limitations, we propose a robust face recognition method named Locality Constrained Joint Dynamic Sparse Representation-based Classification (LCJDSRC) in this paper. In our method, a face image is first partitioned into several smaller sub-images. Then, these sub-images are sparsely represented using the proposed locality constrained joint dynamic sparse representation algorithm. Finally, the representation results for all sub-images are aggregated to obtain the final recognition result. Compared with other algorithms which process each sub-image of a face image independently, the proposed algorithm regards the local matching-based face recognition as a multi-task learning problem. Thus, the latent relationships among the sub-images from the same face image are taken into account. Meanwhile, the locality information of the data is also considered in our algorithm. We evaluate our algorithm by comparing it with other state-of-the-art approaches. Extensive experiments on four benchmark face databases (ORL, Extended YaleB, AR and LFW) demonstrate the effectiveness of LCJDSRC.
机译:近来,基于稀疏表示的分类(SRC)因其在各种任务中的应用而引起了很多关注,特别是在诸如面部识别之类的生物统计技术中。但是,面部图像中的照明,表情,姿势和伪装变化等因素会降低SRC和大多数其他面部识别技术的性能。为了克服这些限制,我们在本文中提出了一种鲁棒的人脸识别方法,称为局部约束联合基于动态稀疏表示的分类(LCJDSRC)。在我们的方法中,首先将面部图像分割为几个较小的子图像。然后,使用所提出的局部约束联合动态稀疏表示算法来稀疏表示这些子图像。最后,汇总所有子图像的表示结果,以获得最终的识别结果。与其他算法分别处理人脸图像的每个子图像相比,该算法将基于局部匹配的人脸识别视为一个多任务学习问题。因此,考虑了来自同一面部图像的子图像之间的潜在关系。同时,在我们的算法中还考虑了数据的局部性信息。我们通过将其与其他最新方法进行比较来评估我们的算法。在四个基准人脸数据库(ORL,Extended YaleB,AR和LFW)上进行的大量实验证明了LCJDSRC的有效性。

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