Posterior Linearization Filter: Principles and Implementation Using Sigma Points
Journal article, 2015

This paper is concerned with Gaussian approximations to the posterior probability density function (PDF) in the update step of Bayesian filtering with nonlinear measurements. In this setting, sigma-point approximations to the Kalman filter (KF) recursion are widely used due to their ease of implementation and relatively good performance. In the update step, these sigma-point KFs are equivalent to linearizing the nonlinear measurement function by statistical linear regression (SLR) with respect to the prior PDF. In this paper, we argue that the measurement function should be linearized using SLR with respect to the posterior rather than the prior to take into account the information provided by the measurement. The resulting filter is referred to as the posterior linearization filter (PLF). In practice, the exact PLF update is intractable but can be approximated by the iterated PLF (IPLF), which carries out iterated SLRs with respect to the best available approximation to the posterior. The IPLF can be seen as an approximate recursive Kullback-Leibler divergence minimization procedure. We demonstrate the high performance of the IPLF in relation to other Gaussian filters in two numerical examples.

Bayes' rule

sigma-points

statistical linear regression

nonlinear filtering

Kalman filter

Author

Angel Garcia

Curtin University

Lennart Svensson

Chalmers, Signals and Systems, Signal Processing and Biomedical Engineering

M. R. Morelande

RMIT University

S. Särkkä

Aalto University

IEEE Transactions on Signal Processing

1053-587X (ISSN) 1941-0476 (eISSN)

Vol. 63 20 5561-5573 7153566

Subject Categories

Signal Processing

DOI

10.1109/tsp.2015.2454485

More information

Latest update

9/25/2020