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A Two-Phase Test Sample Sparse Representation Method for Use With Face Recognition

机译:用于面部识别的两阶段测试样本稀疏表示方法

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摘要

In this paper, we propose a two-phase test sample representation method for face recognition. The first phase of the proposed method seeks to represent the test sample as a linear combination of all the training samples and exploits the representation ability of each training sample to determine M “nearest neighbors” for the test sample. The second phase represents the test sample as a linear combination of the determined M nearest neighbors and uses the representation result to perform classification. We propose this method with the following assumption: the test sample and its some neighbors are probably from the same class. Thus, we use the first phase to detect the training samples that are far from the test sample and assume that these samples have no effects on the ultimate classification decision. This is helpful to accurately classify the test sample. We will also show the probability explanation of the proposed method. A number of face recognition experiments show that our method performs very well.
机译:在本文中,我们提出了一种用于人脸识别的两阶段测试样本表示方法。所提出方法的第一阶段试图将测试样本表示为所有训练样本的线性组合,并利用每个训练样本的表示能力来确定测试样本的M个“最近邻居”。第二阶段将测试样本表示为确定的M个最近邻居的线性组合,并使用表示结果执行分类。我们基于以下假设提出此方法:测试样本及其一些邻居可能来自同一类。因此,我们使用第一阶段来检测距离测试样本较远的训练样本,并假设这些样本对最终分类决策没有影响。这有助于准确地分类测试样品。我们还将展示该方法的概率解释。大量的面部识别实验表明,我们的方法效果很好。

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