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Distributed track-to-track fusion for non-linear systems with Gaussian mixture noise

机译:具有高斯混合噪声的非线性系统的分布式轨道间融合

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摘要

The authors propose a distributed state estimation algorithm based on optimal track-to-track fusion for local posteriors in terms of Gaussian mixtures. The track-to-track fusion system is implemented with both parallel and sequential structure based on generalised covariance intersection rule. They obtain the optimal fusion coefficients in a computationally efficient manner via Monte Carlo importance sampling method. The Dirac mixture approximation method is proposed for the computation of arbitrary power of a Gaussian mixture density. The resulting Gaussian mixture fusion rule is analytical and applicable to the multi-sensor case. Numerical examples are presented to demonstrate the performance advantages of the proposed method in comparison with existing track-to-track fusion algorithms.
机译:作者提出了一种基于最优轨迹间融合的分布式状态估计算法,以高斯混合为基础。基于广义协方差交会规则,采用并行和顺序结构实现轨道间融合系统。他们通过蒙特卡洛重要性抽样方法以计算有效的方式获得了最佳融合系数。提出了狄拉克混合近似方法,用于计算高斯混合密度的任意幂。所得的高斯混合融合规则具有分析性,适用于多传感器情况。数值算例表明了该方法与现有的轨间融合算法相比的性能优势。

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