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Kernel Based Weighted Group Sparse Representation Classifier

机译:基于核的加权群稀疏表示分类器

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Sparse representation classification (SRC) is a new framework for classification and has been successfully applied to face recognition. However, SRC can not well classify the data when they are in the overlap feature space. In addition, SRC treats different samples equally and ignores the cooperation among samples belong to the same class. In this paper, a kernel based weighted group sparse classifier (KWGSC) is proposed. Kernel trick is not only used for mapping the original feature space into a high dimensional feature space, but also as a measure to select members of each group. The weight reflects the importance degree of training samples in different group. Substantial experiments on benchmark databases have been conducted to investigate the performance of proposed method in image classification. The experimental results demonstrate that the proposed KWGSC approach has a higher classification accuracy than that of SRC and other modified sparse representation classification.
机译:稀疏表示分类(SRC)是一种新的分类框架,已成功应用于人脸识别。但是,当数据位于重叠要素空间中时,SRC不能很好地对数据进行分类。另外,SRC平等对待不同的样本,而忽略了属于同一类的样本之间的协作。本文提出了一种基于核的加权群稀疏分类器(KWGSC)。内核技巧不仅用于将原始特征空间映射到高维特征空间,而且还用作选择每个组成员的一种措施。权重反映了不同组中训练样本的重要性程度。已经在基准数据库上进行了大量实验,以研究所提出方法在图像分类中的性能。实验结果表明,提出的KWGSC方法具有比SRC和其他改进的稀疏表示分类更高的分类精度。

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