稀疏表示的高效字典的快速设计

Cristian Rusu
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引用次数: 4

摘要

稀疏表示领域的核心问题之一是设计给定数据集具有固定稀疏度级别的过完备字典。本文描述了设计这种字典的一个快速而有效的过程。该方法实现了以下思想:对初始数据集应用约简技术来加快后续过程;实际的训练过程运行一个更复杂的基于K-SVD步骤的迭代扩展过程。图像数据的数值实验表明了该设计策略的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast design of efficient dictionaries for sparse representations
One of the central issues in the field of sparse representations is the design of overcomplete dictionaries with a fixed sparsity level from a given dataset. This article describes a fast and efficient procedure for the design of such dictionaries. The method implements the following ideas: a reduction technique is applied to the initial dataset to speed up the upcoming procedure; the actual training procedure runs a more sophisticated iterative expanding procedure based on K-SVD steps. Numerical experiments on image data show the effectiveness of the proposed design strategy.
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