Iterated square root unscented Kalman particle filter

Guohui Li, Hong Yang
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引用次数: 2

Abstract

In order to improve tracking estimation accuracy of square-root unscented Kalman particle filter (SRUKFPF), a new particle filter algorithm of update SRUKF based on iterated measurements is proposed. The algorithm produces the important density function of particle filter using maximum posteriori estimate of iterated square-root unscented Kalman filter, and amends the state covariance using Levenberg-Marquardt method, so that the observed information of particle is effectively used. This is more consistent with the posterior probability distribution of true state. Simulation results show that estimation performance of the proposed algorithm is much better than standard particle filter (PF), unscented particle filter (UPF) and square root unscented Kalman particle filter (SRUKFPF).
迭代平方根无气味卡尔曼粒子滤波
为了提高平方根无气味卡尔曼粒子滤波(SRUKFPF)的跟踪估计精度,提出了一种基于迭代测量的更新SRUKFPF的粒子滤波算法。该算法利用迭代平方根无气味卡尔曼滤波的最大后验估计产生粒子滤波的重要密度函数,并利用Levenberg-Marquardt方法修正状态协方差,使粒子的观测信息得到有效利用。这更符合真实状态的后验概率分布。仿真结果表明,该算法的估计性能明显优于标准粒子滤波(PF)、无气味粒子滤波(UPF)和平方根无气味卡尔曼粒子滤波(SRUKFPF)。
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