连续时间框架中的粒子滤波器

D. Crisan
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引用次数: 5

摘要

本文报道了连续时间滤波问题数值解的一类新算法。这些算法的灵感来自于随机微分方程解的弱近似领域的最新进展。属于这一类的算法以狄拉克测度的线性组合形式产生信号条件分布的近似,因此可以解释为粒子滤波器,或者更准确地说,是对滤波问题解的粒子近似。讨论了这些算法的主要特点,并给出了该类算法的一个收敛结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Particle Filters in a Continuous Time Framework
I report on a new class of algorithms for the numerical solution of the continuous time filtering problem. These algorithms are inspired by recent advances in the area of weak approximations for solutions of stochastic differential equations. The algorithms belonging to this class generate approximations of the conditional distribution of the signal in the form of linear combinations of Dirac measures, hence can be interpreted as particle filters or, more precisely, particle approximations to the solution of the filtering problem. The main characteristics of these algorithms are discussed and a convergence result for the entire class is stated.
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