基于压缩感知的无线传感器网络多事件检测

Yu Liu, Xuqi Zhu, Cong Ma, Lin Zhang
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引用次数: 9

摘要

事件检测是无线传感器网络(WSN)的主要应用之一。然而,由于传感器的感测数据存在噪声和无线信道噪声,很难保证检测的准确性,特别是在多事件检测中。本文提出了一种基于压缩感知(CS)的多事件检测方案。与CS问题类似,CS的高效恢复算法可以用于重构包含多个同时发生事件的源信号。而且事件变化不大,因此相邻两个时刻的源信号具有较高的冗余度。我们的方案还利用了这种时间相关性来提高检测精度。在该方案中,不仅可以获得事件的位置,还可以获得事件的值。在我们的方案中使用了CS的三种算法,以显示在检测概率上优于使用贝叶斯的传统分散检测方法。
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Multiple event detection in wireless sensor networks using compressed sensing
Event Detection is one of the main applications of wireless sensor networks (WSN). However, due to the noisy sensed data of sensors and the wireless channel noise, it's difficult to guarantee the accuracy of detection, especially in multiple event detection. In this paper, we proposed a multiple event detection scheme using compressed sensing (CS). By analogy with CS problem, the efficient recovery algorithms of CS can be used to reconstruct the source signal that contains multiple simultaneous events. Moreover, the events may not change much, so the source signals at two adjacent time instants have high redundancy. This temporal correlation is also utilized in our scheme to improve the detection accuracy. In the proposed scheme, not only the position but also the value of an event can be achieved. Three algorithms of CS are used in our scheme to show the advantages on detection probability over the traditional decentralized detection methods using Bayesian.
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