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Compressive Sensing Optimization for Signal Ensembles in WSNs

机译:无线传感器网络中信号集合的压缩感知优化

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摘要

Compressive sensing (CS) is a new approach to simultaneous sensing and compressing that is highly promising for fully distributed compression in wireless sensor networks (WSNs). While a wide investigation has been performed about theory and practice of CS for individual signals, real and practical cases, in general, involve multiple signals, extending the problem of compression from 1-D single-sensor to 2-D multiple-sensors data. In this paper the two most prominent frameworks on sparsity and compressibility of multidimensional signals and signal ensembles, Distributed compressed sensing (DCS) and Kronecker compressive sensing (KCS), are investigated. In this paper we compare these two frameworks against a common set of artificial signals properly built to embody the main characteristics of natural signals. We further investigate how, in a real deployment, DCS can be used to reduce the power consumption and to prolong lifetime. In particular an extensive analysis is performed using real commercial off-the-shelf (COTS) hardware evaluating how different kind of compression matrices can affect the jointly reconstruction, trying to achieve the better tradeoff between quality and energy expenditure.
机译:压缩感测(CS)是一种同时感测和压缩的新方法,对于无线传感器网络(WSN)中的完全分布式压缩来说,这是非常有前途的。尽管已经对单个信号的CS的理论和实践进行了广泛的研究,但是实际情况和实际情况通常涉及多个信号,从而将压缩问题从一维单传感器数据扩展到了二维多传感器数据。本文研究了多维信号和信号集合的稀疏性和可压缩性的两个最著名的框架,即分布式压缩感知(DCS)和Kronecker压缩感知(KCS)。在本文中,我们将这两个框架与一组适当构建以体现自然信号主要特征的人工信号进行比较。我们将进一步研究在实际部署中如何使用DCS来降低功耗并延长使用寿命。特别是,使用实际的商用现货(COTS)硬件进行了广泛的分析,评估了不同类型的压缩矩阵如何影响联合重建,从而试图在质量和能耗之间取得更好的平衡。

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