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Optimal Distributed Detection of Multiple Hypotheses using Blind Algorithm

机译:基于盲算法的多个假设的最优分布式检测

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摘要

In a parallel distributed detection system each local detector makes a decision based on its own observations and transmits its local decision to a fusion center, where a global decision is made. Given fixed local decision rules, in order to design the optimal fusion rule, the fusion center needs to have perfect knowledge of the performance of the local detectors as well as the prior probabilities of the hypotheses. Such knowledge is not available in most practical cases. We propose a blind technique for the M-ary distributed detection problem. The occurrence number of a possible decision combination at all local detectors is multinomially distributed with the occurrence probability being a nonlinear function of the prior probabilities of hypotheses and the parameters describing the performance of local detectors. We derive least squares (LS) and maximum likelihood (ML) estimates of unknown parameters using local decisions and compare their individual performance. We also derive analytically the overall detection performance for both binary and M-ary distributed detection and discuss the difference of the overall detection performance obtained using the estimated values of unknown parameters and their true values. Finally, we demonstrate the applicability of our results through numerical examples.
机译:在并行分布式检测系统中,每个本地检测器都根据自己的观察结果做出决定,并将其本地决定传输到融合中心,然后由融合中心做出全局决策。在给定固定的局部决策规则的情况下,为了设计最佳融合规则,融合中心需要对局部检测器的性能以及假设的先验概率有全面的了解。在大多数实际情况下,此类知识是不可用的。我们针对Mary分布式检测问题提出了一种盲目技术。在所有本地检测器上可能决策组合的出现次数呈多项式分布,其中出现概率是假设的先验概率和描述本地检测器性能的参数的非线性函数。我们使用局部决策得出未知参数的最小二乘(LS)和最大似然(ML)估计值,并比较它们的个别性能。我们还通过分析得出二进制和M元分布式检测的整体检测性能,并讨论使用未知参数的估计值及其真实值获得的整体检测性能的差异。最后,我们通过数值示例证明了我们的结果的适用性。

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