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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Collaborative representation based face classification exploiting block weighted LBP and analysis dictionary learning
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Collaborative representation based face classification exploiting block weighted LBP and analysis dictionary learning

机译:基于协作表示的面部分类利用块加权LBP和分析字典学习

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摘要

Traditional collaborative representation based classification (CRC) method usually faces the challenge of data uncertainty hence results in poor performance, especially in the presence of appearance variations in pose, expression and illumination. To overcome this issue, this paper presents a CRC-based face classification method by jointly using block weighted LBP and analysis dictionary learning. To this end, we first design a block weighted LBP histogram algorithm to form a set of local histogram-based feature vectors instead of using raw images. By this means we are able to effectively decrease data redundancy and uncertainty derived from image noises and appearance variations. Second, we adopt an analysis dictionary learning model as the projection transform to construct an analysis subspace, in which a new sample is characterized with the improved sparsity of its reconstruction coefficient vector. The crucial role of the analysis dictionary learning method in CRC is revealed by its capacity of the collaborative representation in an analytic coefficient space. Extensive experimental results conducted on a set of well-known face databases demonstrate the merits of the proposed method. (C) 2018 Elsevier Ltd. All rights reserved.
机译:基于传统的基于协作表示的分类(CRC)方法通常面临数据不确定性的挑战,因此导致性能差,特别是在存在姿势,表达和照明的外观变化。为了克服这个问题,本文通过块加权LBP和分析词典学习共同提出了基于CRC的面部分类方法。为此,我们首先设计一个块加权的LBP直方图算法,形成一组基于直方图的特征向量,而不是使用原始图像。通过这意味着我们能够有效地降低从图像噪声和外观变化导出的数据冗余和不确定性。其次,我们采用分析字典学习模型作为投影变换来构建分析子空间,其中新的样本具有改进的重建系数矢量的稀疏性。分析词典学习方法在CRC中的作用是通过其在分析系数空间中的协作表示的能力揭示。在一组众所周知的面部数据库上进行了广泛的实验结果,证明了所提出的方法的优点。 (c)2018年elestvier有限公司保留所有权利。

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