Collaborative Representation-based Classification Method Using Weighted Multi-scale LBP for Image Recognition

Xiaoning Song, Yao Chen
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Abstract

In this paper, we propose a novel collaborative representation-based classification method using weighted multi-scale LBP for face recognition. First, to capture more useful local information from the dictionary, we constructed a weighted hierarchical multi-scale LBP as a dictionary optimization tool to dig out the multi-scale information of the original samples. Second, a query sample is represented as a linear combination of the most informative weighted multi-scale LBP features, in which the representation capability of each weighted multi-scale LBP feature is measured to determine the "nearest neighbors" for representing the test sample. The final goal of the proposed method is to find an optimal representation of these weighted multi-scale LBP features from the classes with major contributions. Experimental results conducted on the ORL, FERET, AR and GT face databases demonstrate the effectiveness of the proposed method
基于协同表示的加权多尺度LBP图像识别方法
本文提出了一种基于加权多尺度LBP的协同表示分类方法。首先,为了从字典中获取更多有用的局部信息,我们构建了一个加权层次多尺度LBP作为字典优化工具,挖掘原始样本的多尺度信息。其次,将查询样本表示为信息量最大的加权多尺度LBP特征的线性组合,其中测量每个加权多尺度LBP特征的表示能力,以确定表示测试样本的“最近邻”。该方法的最终目标是从具有主要贡献的类中找到这些加权多尺度LBP特征的最优表示。在ORL、FERET、AR和GT人脸数据库上的实验结果表明了该方法的有效性
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