Embedding prior knowledge within compressed sensing by neural networks.

IEEE transactions on neural networks Pub Date : 2011-10-01 Epub Date: 2011-09-06 DOI:10.1109/TNN.2011.2164810
Dany Merhej, Chaouki Diab, Mohamad Khalil, Rémy Prost
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引用次数: 22

Abstract

In the compressed sensing framework, different algorithms have been proposed for sparse signal recovery from an incomplete set of linear measurements. The most known can be classified into two categories: l(1) norm minimization-based algorithms and l(0) pseudo-norm minimization with greedy matching pursuit algorithms. In this paper, we propose a modified matching pursuit algorithm based on the orthogonal matching pursuit (OMP). The idea is to replace the correlation step of the OMP, with a neural network. Simulation results show that in the case of random sparse signal reconstruction, the proposed method performs as well as the OMP. Complexity overhead, for training and then integrating the network in the sparse signal recovery is thus not justified in this case. However, if the signal has an added structure, it is learned and incorporated in the proposed new OMP. We consider three structures: first, the sparse signal is positive, second the positions of the non zero coefficients of the sparse signal follow a certain spatial probability density function, the third case is a combination of both. Simulation results show that, for these signals of interest, the probability of exact recovery with our modified OMP increases significantly. Comparisons with l(1) based reconstructions are also performed. We thus present a framework to reconstruct sparse signals with added structure by embedding, through neural network training, additional knowledge to the decoding process in order to have better performance in the recovery of sparse signals of interest.

用神经网络在压缩感知中嵌入先验知识。
在压缩感知框架中,已经提出了不同的算法来从不完全线性测量集中恢复稀疏信号。最著名的算法可分为两类:基于l(1)范数最小化算法和基于贪婪匹配追踪算法的l(0)伪范数最小化算法。本文提出了一种基于正交匹配追踪(OMP)的改进匹配追踪算法。这个想法是用一个神经网络取代OMP的相关步骤。仿真结果表明,在随机稀疏信号重构的情况下,该方法的性能与OMP方法相当。因此,在这种情况下,用于训练然后在稀疏信号恢复中集成网络的复杂性开销是不合理的。然而,如果信号有一个附加的结构,它将被学习并合并到提议的新OMP中。我们考虑三种结构:第一种是稀疏信号为正,第二种是稀疏信号的非零系数的位置遵循一定的空间概率密度函数,第三种是两者的结合。仿真结果表明,对于这些感兴趣的信号,使用改进的OMP精确恢复的概率显着增加。还与基于l(1)的重建进行了比较。因此,我们提出了一个框架,通过神经网络训练,在解码过程中嵌入额外的知识,从而重构具有附加结构的稀疏信号,从而在恢复感兴趣的稀疏信号方面具有更好的性能。
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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来源期刊
IEEE transactions on neural networks
IEEE transactions on neural networks 工程技术-工程:电子与电气
自引率
0.00%
发文量
2
审稿时长
8.7 months
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