分割更新二项高斯混合滤波器

M. Raitoharju, Á. F. García-Fernández, S. Särkkä
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引用次数: 0

摘要

高斯混合滤波器(GMFs)是用于非线性估计的贝叶斯滤波器的近似。GMF由高斯分量的加权和组成。每个组件都使用卡尔曼型滤波器进行传播和更新。当更新步骤中的非线性很小时,产生精确近似值所需的分量数量就很小,反之亦然。在本文中,我们对GMF提出了多种改进,以减少计算量并提高估计精度。新的滤波器处理测量,使最小的非线性测量将首先应用,这减少了对新组件的需求。在分离高斯分量后,进行更新,使测量函数只在非线性方向上求值,从而减少了计算量。最后,我们提出了一种新的更快的算法来减少测量后的组件数量。结果表明,所提出的改进使算法速度更快,并且相对于GMF提高了估计精度,作为开发的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Partitioned Update Binomial Gaussian Mixture Filter
Gaussian Mixture Filters (GMFs) are approximations of the Bayesian filter for nonlinear estimation. A GMF consists of a weighted sum of Gaussian components. Each component is propagated and updated with a Kalman-type filter. When the nonlinearity is small in the update step, the required number of components to yield an accurate approximation is small and vice versa. In this paper, we propose multiple improvements to GMF that reduce the computational load and increase the estimation accuracy. The new filter processes measurements so that the least nonlinear measurements will be applied first, this reduces the need for new components. After splitting a Gaussian component, the update is done so that the measurement function is evaluated only in nonlinear directions, which reduces computational load. Finally we propose a new faster algorithm for reducing the number of components after measurements are applied. Results show that the proposed improvements make the algorithm faster and improve the estimation accuracy with respect to a GMF that is used as a basis for development.
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