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Convergence Results for the Gaussian Mixture Implementation of the Extended-Target PHD Filter and Its Extended Kalman Filtering Approximation

机译:扩展目标PHD滤波器的高斯混合实现的收敛结果及其扩展卡尔曼滤波近似

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The convergence of the Gaussian mixture extended-target probability hypothesis density (GM-EPHD) filter and its extended Kalman (EK) filtering approximation in mildly nonlinear condition, namely, the EK-GM-EPHD filter, is studied here. This paper proves that both the GM-EPHD filter and the EK-GM-EPHD filter converge uniformly to the true EPHD filter. The significance of this paper is in theory to present the convergence results of the GM-EPHD and EK-GM-EPHD filters and the conditions under which the two filters satisfy uniform convergence.
机译:在轻度非线性条件下,研究了高斯混合扩展目标概率假设密度(GM-EPHD)滤波器及其扩展卡尔曼(EK)滤波近似的收敛性,即EK-GM-EPHD滤波器。本文证明GM-EPHD滤波器和EK-GM-EPHD滤波器均会收敛到真正的EPHD滤波器。本文的意义是从理论上介绍GM-EPHD和EK-GM-EPHD滤波器的收敛结果以及两个滤波器满足均匀收敛的条件。

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