Progressive Bayesian Filtering with Coupled Gaussian and Dirac Mixtures

Daniel Frisch, U. Hanebeck
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引用次数: 4

Abstract

Nonlinear filtering is the most important aspect in state estimation with real-world systems. While the Kalman filter provides a simple though optimal estimate for linear systems, feasible filters for general systems are still subject of intensive research. The previously proposed Progressive Gaussian Filter PGF42 marked a new milestone, as it was able to efficiently compute an optimal Gaussian approximation of the posterior density in nonlinear systems [1]. However, for highly nonlinear systems where true posteriors are “banana-shaped” (e.g., cubic sensor problem) or multimodal (e.g., extended object tracking), even an optimal Gaussian approximation is an inadequate representation. Therefore, we generalize the established framework around the PGF42 from Gaussian to Gaussian mixture densities that are better able to approximate arbitrary density functions. Our filter simultaneously holds approximate Gaussian mixture and Dirac mixture representations of the same density, what we call coupled discrete and continuous densities (CoDiCo). For conversion between discrete and continuous representation, we employ deterministic sampling and the expectation-maximization (EM) algorithm, which we extend to deal with weighted particles.
高斯和狄拉克混合耦合的渐进贝叶斯滤波
非线性滤波是现实系统状态估计中最重要的一个方面。虽然卡尔曼滤波器为线性系统提供了一个简单但最优的估计,但对于一般系统的可行滤波器仍然是一个深入研究的主题。先前提出的渐进式高斯滤波器PGF42标志着一个新的里程碑,因为它能够有效地计算非线性系统中后验密度的最优高斯近似[1]。然而,对于真正的后验是“香蕉形”(例如,三次传感器问题)或多模态(例如,扩展目标跟踪)的高度非线性系统,即使是最优高斯近似也是不充分的表示。因此,我们将围绕PGF42建立的框架从高斯推广到能够更好地近似任意密度函数的高斯混合密度。我们的滤波器同时持有相同密度的近似高斯混合和狄拉克混合表示,我们称之为耦合离散和连续密度(CoDiCo)。对于离散表示和连续表示之间的转换,我们采用确定性采样和期望最大化(EM)算法,并将其扩展到处理加权粒子。
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