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An Effective Decentralized Nonparametric Quickest Detection Approach

机译:有效的分散性非参数最快的检测方法

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This paper studies decentralized quickest detection schemes that can be deployed in a sensing environment where data streams are simultaneously collected from multiple channels located distributively to jointly support the detection. Existing decentralized detection approaches are largely parametric that require the knowledge of pre-change and post-change distributions. In this paper, we first present an effective nonparametric detection procedure based on Q-Q distance measure. We then describe two implementations schemes, binary quickest detection and local decision fusion by majority voting, that realize decentralized nonparametric detection. Experimental results show that the proposed method has a comparable performance to the parametric CUSUM test in binary detection. Its decision fusion-based implementation also outperforms the other three popular fusion rules under the parametric framework.
机译:本文研究了分散的最快检测方案,其可以部署在感测环境中,其中数据流同时从分布式地定位以共同支持检测的传感器。现有的分散检测方法在很大程度上是参数化,需要预先改变和改变后的分布。在本文中,我们首先介绍基于Q-Q距离测量的有效的非参数检测过程。然后,我们描述了两种实现方案,由大多数投票的二进制最快的检测和局部决策融合,实现分散的非参数检测。实验结果表明,该方法对二进制检测中的参数化Cusum试验具有相当的性能。其决策基于融合的实现也优于参数框架下的其他三个流行的融合规则。

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