基于二元包覆正态分布的非线性环面滤波

G. Kurz, F. Pfaff, U. Hanebeck
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引用次数: 5

摘要

估计周期量,如角度或相位值是一个常见的问题。然而,标准方法,例如卡尔曼滤波及其扩展,在估计周期量时存在困难。为了解决这个问题,已经提出了循环滤波算法,但它们仅限于一个角度。为了处理多个可能相关的角度,需要使用环面滤波算法。我们之前提出了一种环面上的二元滤波算法[1],该算法仅限于身份系统和测量模型。在本文中,我们展示了如何将该算法扩展到处理非线性系统和测量模型。该方法依赖于二元包裹正态分布来表示不确定性,并对环面使用确定性采样方案。我们通过模拟对所提出的方法进行了全面的评估。
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Nonlinear toroidal filtering based on bivariate wrapped normal distributions
Estimation of periodic quantities such as angles or phase values is a common problem. However, standard approaches, for example the Kalman filter and extensions thereof, have difficulties when estimating periodic quantities. To address this problem, circular filtering algorithms have been proposed but they are limited to just a single angle. In order to deal with multiple, possibly correlated angles, toroidal filtering algorithms are necessary. We have previously proposed a bivariate filtering algorithm on the torus [1] that is limited to identity system and measurement models. In this paper, we show how the algorithm can be extended to handle nonlinear system and measurement models. The novel approach relies on the bivariate wrapped normal distribution for representing the uncertainty and it makes use of a deterministic sampling scheme for the torus. We provide a thorough evaluation of the proposed method using simulations.
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