The Interacting Multiple Model Filter on Boxplus-Manifolds

Tom L. Koller, U. Frese
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引用次数: 1

Abstract

The interacting multiple model filter is the standard in state estimation where different dynamic models are required to model the behavior of a system. It performs a probabilistic mixing of estimates. Up to now, it is undefined how to perform this mixing properly on manifold spaces, e.g. quaternions. We present the proper probabilistic mixing on differentiable manifolds based on the boxplus-method. The result is the interacting multiple model filter on boxplus-manifolds. We prove that our approach is a first order correct approximation of the optimum. The approach is evaluated in a simulation and performs as good as the ad-hoc solution for quaternions. A generic implementation of the boxplus interacting multiple model filter for differentiable manifolds is published alongside with this paper.
箱加流形上的交互多模型滤波器
交互多模型滤波器是状态估计中的标准,其中需要不同的动态模型来建模系统的行为。它执行估计的概率混合。到目前为止,如何在流形空间(如四元数)上正确地进行这种混合还没有明确的定义。基于盒加方法,给出了可微流形上的适当概率混合。结果是箱加流形上的交互多模型滤波器。我们证明了我们的方法是最优解的一阶正确逼近。在仿真中对该方法进行了评估,结果表明该方法的性能与四元数的自组织解决方案一样好。本文给出了可微流形的boxplus交互多模型滤波器的一个通用实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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