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A Neyman-Pearson Type Sensor Censoring Scheme for Compressive Distributed Sparse Signal Recovery

机译:用于压缩分布式稀疏信号恢复的Neyman-Pearson型传感器审查方案

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To strike a balance between energy efficiency and data quality control, this paper proposes a Neyman-Pearson type sensor censoring scheme for distributed sparse signal recovery via compressive-sensing based on wireless sensor networks. In the proposed approach, each sensor node employs a sparse sensing vector with known support for data compression, meanwhile enabling making local inference about the unknown support of the sparse signal vector of interest. This naturally leads to a ternary censoring protocol, whereby each sensor (i) directly transmits the real-valued compressed data if the sensing vector support is detected to be overlapped with the signal support, (ii) sends a one-bit hard decision if empty support overlap is inferred, (iii) keeps silent if the measurement is judged to be uninformative. Our design then aims at minimizing the error probability that empty support overlap is decided but otherwise is true, subject to the constraints on a tolerable false-alarm probability that non-empty support overlap is decided but otherwise is true, and a target censoring rate. We derive a closed-form formula of the optimal censoring rule; a low complexity implementation using bi-section search is also developed. Computer simulations are used to illustrate the performance of the proposed scheme.
机译:为了在能效和数据质量控制之间取得平衡,本文提出了一种基于无线传感器网络的压缩检测分布式稀疏信号恢复的Neyman-Pearson型传感器审查方案。在所提出的方法中,每个传感器节点采用具有已知支持的稀疏感测向量,用于数据压缩,同时能够使局部推断对稀疏信号矢量的未知支持进行局部推断。这自然地导致了三元审查协议,其中每个传感器(I)如果检测到检测到用信号支持重叠,则直接发送真实的压缩数据,(ii)如果为空,则发送一位硬度决定推断支持重叠,(iii)如果判断测量是不可写的,则保持静音。我们的设计旨在最大限度地减少确定空支持重叠的误差概率,但否则是真的,而不是对非空支持重叠的受阻假警报概率的约束来说,但否则为真,并且目标审查率是真实的。我们得出了最佳审查规则的封闭式公式;还开发了使用双部分搜索的低复杂性实现。计算机模拟用于说明所提出的方案的性能。

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