Multi-sensor Distributed Estimation Fusion Based on Minimizing the Bhattacharyya Distance Sum

Qichao Tang, Z. Duan
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Abstract

In multi-sensor distributed estimation fusion, local estimation errors are generally correlated among local estimates. Usually, correlation is known to exist but unavailable or unclear to be how large it is, and needed to be considered. For this situation, a sensible way is to set up an optimality criterion and optimize it over all possible such correlations. Based on the framework of minimizing the statistical distance sum between the fused density and local posterior densities, a new method is proposed by utilizing Bhattacharyya distance, which is commonly used in measuring the closeness or similarity between two densities. First, the objective function is introduced. Then, we investigate the convexity form of the objective function, and separate the solving procedure into two steps during settling the original optimization problem, which benefit us to acquire the solution of that problem. At last, the acquired solution (fused estimate) is given in an implicit form, however, it can be obtained through iterative algorithm. And, it is pessimistic definite in mean square error (MSE). Numerical examples illustrate this and show the effectiveness of the proposed distributed method by comparing with several other fusion methods under the same framework but using other kinds of statistical distance.
基于最小Bhattacharyya距离和的多传感器分布式估计融合
在多传感器分布式估计融合中,局部估计误差通常存在局部估计误差之间的相关性。通常,相关性是已知存在的,但不可用或不清楚它有多大,需要考虑。对于这种情况,明智的方法是建立一个最优性标准,并对所有可能的此类相关性进行优化。基于最小化融合密度与局部后验密度之间的统计距离和的框架,提出了一种利用Bhattacharyya距离来衡量两个密度之间的紧密度或相似性的新方法。首先,介绍了目标函数。然后,研究了目标函数的凸性形式,并在求解原优化问题时将求解过程分为两步,有利于求解原优化问题。最后以隐式形式给出了获得的解(融合估计),但可以通过迭代算法得到。在均方误差(MSE)上是悲观确定的。数值算例验证了该方法的有效性,并与其他几种基于不同统计距离的分布式融合方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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