Article ID Journal Published Year Pages File Type
566325 Signal Processing 2015 13 Pages PDF
Abstract

•Comparison of Gaussian filtering based and variational Gaussian smoothers for SDEs.•Sigma-point approximations of the variational Gaussian smoother.•Extension of variational Gaussian smoother to singular systems.•Variational Gaussian smoother improves results in highly nonlinear systems.

The Bayesian smoothing equations are generally intractable for systems described by nonlinear stochastic differential equations and discrete-time measurements. Gaussian approximations are a computationally efficient way to approximate the true smoothing distribution. In this work, we present a comparison between two Gaussian approximation methods. The Gaussian filtering based Gaussian smoother uses a Gaussian approximation for the filtering distribution to form an approximation for the smoothing distribution. The variational Gaussian smoother is based on minimizing the Kullback–Leibler divergence of the approximate smoothing distribution with respect to the true distribution. The results suggest that for highly nonlinear systems, the variational Gaussian smoother can be used to iteratively improve the Gaussian filtering based smoothing solution. We also present linearization and sigma-point methods to approximate the intractable Gaussian expectations in the variational Gaussian smoothing equations. In addition, we extend the variational Gaussian smoother for certain class of systems with singular diffusion matrix.

Related Topics
Physical Sciences and Engineering Computer Science Signal Processing
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