Optimal Quantization in Decentralized Detection by Maximizing the Average Entropy of the Sensors

Muath A. Wahdan, M. Altınkaya
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引用次数: 3

Abstract

In a wireless sensor network the sensor outputs are required to be quantized because of energy and bandwidth requirements. We propose such a distributed detection scheme for a point source which is based on Neyman-Pearson criterion where sensor outputs are quantized maximizing the average output entropy of the sensors under both hypotheses. The quantized local outputs are transmitted to a fusion center (FC) where they are used to make a global decision. The performance of the proposed maximum average entropy (MAE) method in quantizing sensor outputs was tested for binary, ternary and quarternary quantization. The effects of the channel from the sensors to the FC is also addressed by simplified channel models. The simulation studies show the success of the MAE method.
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利用传感器平均熵最大化分散检测中的最优量化
在无线传感器网络中,由于能量和带宽的要求,传感器输出需要量子化。我们提出了一种基于Neyman-Pearson准则的点源分布式检测方案,其中传感器输出在两种假设下被量化,最大限度地提高了传感器的平均输出熵。量化的局部输出被传输到融合中心(FC),在那里它们被用来做出全局决策。对所提出的最大平均熵(MAE)方法在传感器输出量化中的性能进行了二进制、三进制和四进制量化测试。从传感器到FC的通道的影响也通过简化的通道模型来解决。仿真研究表明,该方法是成功的。
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