瞬态密度分解的点质量滤波器

P. Tichavský, O. Straka, J. Duník
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引用次数: 4

摘要

本文研究了非线性随机动力系统的状态估计问题,重点研究了基于网格的贝叶斯递推关系的数值解——点质量滤波器。本文提出了一种描述系统动力学的暂态密度函数分解方法。该分解基于非负矩阵分解,并将密度分为未来状态和当前状态的函数。这样的分解有利于节约卷积计算,这是PMF性能的瓶颈。通过选择合适的分解等级,可以有效地控制PMF估计质量和计算成本。在地形辅助导航场景下,对瞬态密度分解PMF的性能进行了分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Point-Mass Filter with Decomposition of Transient Density
The paper deals with the state estimation of nonlinear stochastic dynamic systems with special attention on a grid-based numerical solution to the Bayesian recursive relations, the point-mass filter (PMF). In the paper, a novel functional decomposition of the transient density describing the system dynamics is proposed. The decomposition is based on a non-negative matrix factorization and separates the density into functions of the future and current states. Such decomposition facilitates a thrifty calculation of the convolution, which is a bottleneck of the PMF performance. The PMF estimate quality and computational costs can be efficiently controlled by choosing an appropriate rank of the decomposition. The performance of the PMF with the transient density decomposition is illustrated in a terrain-aided navigation scenario.
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