A dictionary-learning algorithm for the analysis sparse model with a determinant-type of sparsity measure

Yujie Li, Shuxue Ding, Zhenni Li
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引用次数: 16

Abstract

Dictionary learning for sparse representation of signals has been successfully applied in signal processing. Most the existing methods are based on the synthesis model, in which the dictionary is overcomplete. This paper addresses the dictionary learning and sparse representation with the so-called analysis model. In this new model, the analysis dictionary multiplying the signal can lead to a sparse outcome. Though it has been studied in the literature, there is still not an investigation in the context of nonnegative signal representation, which should not be a trivial problem. In this paper, moreover, we propose to learn an analysis dictionary from signals using a determinant-type of sparsity measure. In the formulation, we adopt the Euclidean distance as the error measure. Based on these, we present a new algorithm for the dictionary learning and sparse representation. Numerical experiments on recovery of analysis dictionary show the effectiveness of the proposed method.
具有决定型稀疏度测度的分析稀疏模型的字典学习算法
基于字典学习的信号稀疏表示方法已成功应用于信号处理中。现有的方法大多是基于综合模型的,其中字典是过完备的。本文用所谓的分析模型解决了字典学习和稀疏表示问题。在这个新模型中,分析字典乘以信号可以得到稀疏的结果。虽然已有文献对其进行了研究,但在非负信号表示的背景下仍未进行研究,这应该不是一个微不足道的问题。此外,在本文中,我们提出从信号中学习一个分析字典,使用一个决定型的稀疏度测度。在公式中,我们采用欧几里得距离作为误差度量。在此基础上,提出了一种新的字典学习和稀疏表示算法。对分析字典恢复的数值实验表明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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