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Iterative Diffusion-Based Distributed Cubature Gaussian Mixture Filter for Multisensor Estimation

机译:基于迭代扩散的分布式Cubase高斯混合滤波器用于多传感器估计

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摘要

In this paper, a distributed cubature Gaussian mixture filter (DCGMF) based on an iterative diffusion strategy (DCGMF-ID) is proposed for multisensor estimation and information fusion. The uncertainties are represented as Gaussian mixtures at each sensor node. A high-degree cubature Kalman filter provides accurate estimation of each Gaussian mixture component. An iterative diffusion scheme is utilized to fuse the mean and covariance of each Gaussian component obtained from each sensor node. The DCGMF-ID extends the conventional diffusion-based fusion strategy by using multiple iterative information exchanges among neighboring sensor nodes. The convergence property of the iterative diffusion is analyzed. In addition, it is shown that the convergence of the iterative diffusion can be interpreted from the information-theoretic perspective as minimization of the Kullback–Leibler divergence. The performance of the DCGMF-ID is compared with the DCGMF based on the average consensus (DCGMF-AC) and the DCGMF based on the iterative covariance intersection (DCGMF-ICI) via a maneuvering target-tracking problem using multiple sensors. The simulation results show that the DCGMF-ID has better performance than the DCGMF based on noniterative diffusion, which validates the benefit of iterative information exchanges. In addition, the DCGMF-ID outperforms the DCGMF-ICI and DCGMF-AC when the number of iterations is limited.
机译:本文提出了一种基于迭代扩散策略(DCGMF-ID)的分布式高斯混合滤波器(DCGMF),用于多传感器估计和信息融合。不确定性表示为每个传感器节点上的高斯混合。高度培养的卡尔曼滤波器可对每个高斯混合成分进行精确估计。利用迭代扩散方案融合从每个传感器节点获得的每个高斯分量的均值和协方差。 DCGMF-ID通过使用相邻传感器节点之间的多次迭代信息交换,扩展了传统的基于扩散的融合策略。分析了迭代扩散的收敛性。另外,它表明,从信息理论的角度来看,迭代扩散的收敛可以解释为最小化了Kullback-Leibler扩散。通过使用多个传感器的机动目标跟踪问题,将DCGMF-ID的性能与基于平均共识的DCGMF(DCGMF-AC)和基于迭代协方差交点的DCGMF(DCGMF-ICI)进行了比较。仿真结果表明,DCGMF-ID比基于非迭代扩散的DCGMF具有更好的性能,这证明了迭代信息交换的好处。另外,当迭代次数受到限制时,DCGMF-ID优于DCGMF-ICI和DCGMF-AC。

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