分布式检测系统中的多传感器相关与量化

Y. Chau, E. Geraniotis
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引用次数: 3

摘要

在分布式k -传感器系统中,量化和融合方案用于检测弱信号或从相关观测中识别一般信号。针对具有时间依赖性和传感器依赖性的问题,导出了渐近最优的无记忆量化和融合方案。所得到的结果对任意数量的传感器都是有效的,并且可以随着传感器数量的增加以及传感器观测值在不同时间和传感器之间的相关性的变化而比较多传感器系统的性能。通过对不同传感器数量下所提方案性能的仿真,给出了数值结果。结果表明,最优非线性和量化器的性能优于忽略传感器观测的相关性所得到的非线性或量化器,并随着传感器数量的增加而提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multisensor correlation and quantization in distributed detection systems
Quantization and fusion schemes are derived for multisensor correlation in distributed K-sensor systems that are used for the detection of weak signals or general signal discrimination from dependent observations. Asymptotically optimal memoryless quantization and fusion schemes are derived for problems with dependence in the observations across time and sensors. The results obtained are valid for an arbitrary number of sensors and make it possible to compare the performances of multisensor systems as the number of sensors increases and the correlation in the sensor observations across time and sensors varies. Numerical results based on the simulation of the performance of the proposed schemes with different numbers of sensors are presented. The performance of the optimal nonlinearities and quantizers is shown to be better than that of nonlinearities or quantizers obtained by ignoring the dependence in sensor observations and to improve as the number of sensors increases.<>
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