Improved distributed compressed sensing for smooth signals in wireless sensor networks

Boyu Li, F. Gao, Xiaoyu Liu, Xia Wang
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引用次数: 2

Abstract

The technology of the distributed compressed sensing is thought as an extension of compressed sensing and it makes applying multiple signals into compressed sensing possible. A vital issue in distributed compressed sensing is to minimize the difference between the original signal and the recovery signal. In this paper, we improve the distributed compressed sensing for smooth signals in wireless sensor networks. Firstly, we put forward a new weighted method to obtain the common component of all signals, and then one method of lossy coding for shortening the length of common component is proposed. Most importantly, we improve the calculation formula of the distributed compressed sensing to ensure that the common component can be received losslessly. The numerical results show that, comparing with the distributed compressed sensing, the improved distributed compressed sensing not only can use much fewer measurements to recover the original signal, but also enable the effect of signal recovery to be better than that of traditional distributed compressed sensing.
无线传感器网络中平滑信号的改进分布式压缩感知
分布式压缩感知技术是压缩感知技术的一种扩展,它使多信号应用于压缩感知成为可能。分布式压缩感知的一个关键问题是最小化原始信号和恢复信号之间的差异。本文对无线传感器网络中平滑信号的分布式压缩感知进行了改进。首先,我们提出了一种新的加权方法来获取所有信号的公共分量,然后提出了一种缩短公共分量长度的有损编码方法。最重要的是,我们改进了分布式压缩感知的计算公式,保证了公共分量的无损接收。数值结果表明,与分布式压缩感知相比,改进的分布式压缩感知不仅可以使用更少的测量量恢复原始信号,而且信号恢复效果也优于传统的分布式压缩感知。
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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