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Sparse margin–based discriminant analysis for feature extraction

机译:基于稀疏余量的判别分析,用于特征提取

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摘要

The existing margin-based discriminant analysis methods such as nonparametric discriminant analysis use K-nearest neighbor (K-NN) technique to characterize the margin. The manifold learning–based methods use K-NN technique to characterize the local structure. These methods encounter a common problem, that is, the nearest neighbor parameter K should be chosen in advance. How to choose an optimal K is a theoretically difficult problem. In this paper, we present a new margin characterization method named sparse margin–based discriminant analysis (SMDA) using the sparse representation. SMDA can successfully avoid the difficulty of parameter selection. Sparse representation can be considered as a generalization of K-NN technique. For a test sample, it can adaptively select the training samples that give the most compact representation. We characterize the margin by sparse representation. The proposed method is evaluated by using AR, Extended Yale B database, and the CENPARMI handwritten numeral database. Experimental results show the effectiveness of the proposed method; its performance is better than some other state-of-the-art feature extraction methods.
机译:现有的基于余量的判别分析方法(例如非参数判别分析)使用K最近邻(K-NN)技术来表征余量。基于多种学习的方法使用K-NN技术来表征局部结构。这些方法遇到一个普遍的问题,即应提前选择最近的邻居参数K。如何选择最佳K是理论上的难题。在本文中,我们提出了一种新的利用稀疏表示的边缘表征方法,即基于稀疏边缘的判别分析(SMDA)。 SMDA可以成功避免参数选择的困难。稀疏表示可以视为K-NN技术的概括。对于测试样本,它可以自适应地选择给出最紧凑表示形式的训练样本。我们通过稀疏表示来表征余量。通过使用AR,扩展Yale B数据库和CENPARMI手写数字数据库对提出的方法进行评估。实验结果表明了该方法的有效性。其性能优于其他一些最新的特征提取方法。

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