2019
DOI: 10.48550/arxiv.1912.04548
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Maximum Average Entropy-Based Quantization of Local Observations for Distributed Detection

Abstract: In a wireless sensor network, multilevel quantization is necessary in order to find a compromise between the smallest possible power consumption of the sensors and the detection performance at the fusion center (FC). The general methodology is using distance measures such as J-divergence and Bhattacharyya distance in this quantization. This work proposes a different approach which is based on maximizing the average output entropy of the sensors under both hypotheses and utilizes it in a Neyman-Pearson criterio… Show more

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