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Family of iterative LS-based dictionary learning algorithms, ILS-DLA, for sparse signal representation

机译:基于LS的迭代字典学习算法家族(ILS-DLA),用于稀疏信号表示

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The use of overcomplete dictionaries, or frames, for sparse signal representation has been given considerable attention in recent years. The major challenges are good algorithms for sparse approximations. i.e., vector selection algorithms. and good methods for choosing or designing dictionaries/frames. This work is concerned with the latter. We present a family of iterative least squares based dictionary learning algorithms (ILS-DLA), including algorithms for design of signal dependent block based dictionaries and overlapping dictionaries, as generalizations of transforms and filter banks, respectively. In addition different constraints can be included in the ILS-DLA, thus we present different constrained design algorithms. Experiments show that ILS-DLA is capable of reconstructing (most of) the generating dictionary vectors from a sparsely generated data set, with and without noise. The dictionaries are shown to be useful in applications like signal representation and compression where experiments demonstrate that our ILS-DLA dictionaries substantially improve compression results compared to traditional signal expansions such as transforms and filter banks/wavelets. (c) 2006 Elsevier Inc. All rights reserved.
机译:近年来,对于稀疏信号表示,使用不完整的词典或帧已引起了广泛的关注。主要挑战是稀疏近似的良好算法。即矢量选择算法。以及选择或设计字典/框架的好方法。这项工作与后者有关。我们提出了一系列基于迭代最小二乘的字典学习算法(ILS-DLA),其中包括用于设计基于信号的基于块的字典和重叠字典的算法,分别作为变换和滤波器组的概括。另外,ILS-DLA中可以包含不同的约束,因此我们提出了不同的约束设计算法。实验表明,ILS-DLA能够从稀疏生成的数据集中(有噪声和无噪声)重建(大部分)生成的字典矢量。字典显示在诸如信号表示和压缩等应用中非常有用,其中的实验证明,与传统的信号扩展(例如,变换和滤波器组/小波)相比,我们的ILS-DLA字典大大改善了压缩结果。 (c)2006 Elsevier Inc.保留所有权利。

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