Improved particle filter for nonlinear problems
- 1 January 1999
- journal article
- Published by Institution of Engineering and Technology (IET) in IEE Proceedings - Radar, Sonar and Navigation
- Vol. 146 (1) , 2-7
- https://doi.org/10.1049/ip-rsn:19990255
Abstract
The Kalman filter provides an effective solution to the linear Gaussian filtering problem. However where there is nonlinearity, either in the model specification or the observation process, other methods are required. Methods known generically as ‘particle filters’ are considered. These include the condensation algorithm and the Bayesian bootstrap or sampling importance resampling (SIR) filter. These filters represent the posterior distribution of the state variables by a system of particles which evolves and adapts recursively as new information becomes available. In practice, large numbers of particles may be required to provide adequate approximations and for certain applications, after a sequence of updates, the particle system will often collapse to a single point. A method of monitoring the efficiency of these filters is introduced which provides a simple quantitative assessment of sample impoverishment and the authors show how to construct improved particle filters that are both structurally efficient in terms of preventing the collapse of the particle system and computationally efficient in their implementation. This is illustrated with the classic bearings-only tracking problem.Keywords
This publication has 6 references indexed in Scilit:
- Monte CarloPublished by Springer Nature ,1996
- Markov Chain Monte Carlo in PracticePublished by Taylor & Francis ,1995
- Bayesian state estimation for tracking and guidance using the bootstrap filterJournal of Guidance, Control, and Dynamics, 1995
- Recursive Bayesian estimation using piece-wise constant approximationsAutomatica, 1988
- Dynamic Generalized Linear Models and Bayesian ForecastingJournal of the American Statistical Association, 1985
- Monte Carlo MethodsPublished by Springer Nature ,1964