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Robust and discriminative dictionary learning for face recognition

机译:鲁棒和歧视性词典学习对面部识别

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摘要

For face recognition, conventional dictionary learning (DL) methods have some disadvantages. First, face images of the same person vary with facial expressions and pose, illumination and disguises, so it is hard to obtain a robust dictionary for face recognition. Second, they don't cover important components (e.g., particularity and disturbance) completely, which limit their performance. In the paper, we propose a novel robust and discriminative DL (RDDL) model. The proposed model uses sample diversities of the same face image to learn a robust dictionary, which includes class-specific dictionary atoms and disturbance dictionary atoms. These atoms can well represent the data from different classes. Discriminative regularizations on the dictionary and the representation coefficients are used to exploit discriminative information, which improves effectively the classification capability of the dictionary. The proposed RDDL is extensively evaluated on benchmark face image databases, and it shows superior performance to many state-of-the-art dictionary learning methods for face recognition.
机译:对于人脸识别,传统的字典学习(DL)方法具有一些缺点。首先,同一个人的面部图像随着面部表情和姿势,照明和伪装而变化,因此很难获得稳健的字典用于面部识别。其次,他们完全不包括重要组成部分(例如,特殊性和干扰),这限制了它们的表现。在论文中,我们提出了一种新颖的鲁棒和辨别性DL(RDDL)模型。所提出的模型使用相同的面部图像的样本分集来学习稳健的字典,包括特定于类的字典原子和干扰词典原子。这些原子可以很好地代表来自不同类别的数据。字典和表示系数上的判别规范用于利用识别性信息,从而有效地改善了字典的分类能力。在基准面部图像数据库上广泛地评估所提出的RDDL,并且它向面部识别的许多最先进的字典学习方法显示出卓越的性能。

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