一种基于重要抽样的近似最优chernoff融合方法

G. Liu, Ming Li, Wei Yi, Lijiang Kong
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引用次数: 0

摘要

研究了基于Chernoff规则的动态传感器网络分散数据融合问题。一般来说,Chernoff规则的实现具有挑战性,因为融合概率密度函数(pdf)不能以封闭形式获得。此外,现有的Chernoff规则实现工作大多局限于两个传感器的迭代融合。针对这些问题,提出了一种新的基于重要性采样(IS)的Chernoff融合方法。特别地,考虑到多传感器情况,将两传感器Chernoff融合推广为多传感器Chernoff融合,并利用粒子群优化(PSO)方法解决了融合指数计算的高阶优化问题。此外,为了确保Chernoff融合pdf的精确近似,采用了基于IS的程序,其中Chernoff融合不再通过融合局部传感器的(高斯或高斯混合)参数来实现,而是通过从IS中获得的粒子样本来实现。数值结果表明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An approximate optimal chernoff fusion method via importance sampling
This paper focuses on addressing the decentralized data fusion (DDF) problem in dynamic sensor networks based on Chernoff rule. Generally, the Chernoff rule is challenging to implement since the fused probability density functions (pdfs) that cannot be obtained in closed form. Besides, the existing works for implementing Chernoff rule are mostly confined to iterative fusion of two sensors. To address these issues, a novel importance sampling (IS) based Chernoff fusion method is proposed. In particular, by considering the multi-sensor cases, the two sensor Chernoff fusion is generalized to a multi-sensor Chernoff fusion, and the accompanying high-order optimization problem for calculating fusion exponent is addressed by particle swarm optimization (PSO) method. Additionally, to ensure accurate approximation of the Chernoff fusion pdf, an IS based procedure is incorporated, wherein the Chernoff fusion is no longer achieved by fusing (Gaussian or Gaussian mixture) parameters of the local sensors but particle samples that obtained from IS. Numerical results show the efficiency of our method.
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