DocumentCode
37722
Title
Sequential Monte Carlo Methods for State and Parameter Estimation in Abruptly Changing Environments
Author
Nemeth, Christopher ; Fearnhead, Paul ; Mihaylova, Lyudmila
Author_Institution
Dept. Math. & Stat., Lancaster Univ., Lancaster, UK
Volume
62
Issue
5
fYear
2014
fDate
1-Mar-14
Firstpage
1245
Lastpage
1255
Abstract
This paper develops a novel sequential Monte Carlo (SMC) approach for joint state and parameter estimation that can deal efficiently with abruptly changing parameters which is a common case when tracking maneuvering targets. The approach combines Bayesian methods for dealing with change-points with methods for estimating static parameters within the SMC framework. The result is an approach that adaptively estimates the model parameters in accordance with changes to the target´s trajectory. The developed approach is compared against the Interacting Multiple Model (IMM) filter for tracking a maneuvering target over a complex maneuvering scenario with nonlinear observations. In the IMM filter a large combination of models is required to account for unknown parameters. In contrast, the proposed approach circumvents the combinatorial complexity of applying multiple models in the IMM filter through Bayesian parameter estimation techniques. The developed approach is validated over complex maneuvering scenarios where both the system parameters and measurement noise parameters are unknown. Accurate estimation results are presented.
Keywords
Bayes methods; Monte Carlo methods; filtering theory; parameter estimation; state estimation; target tracking; Bayesian methods; IMM filter; combinatorial complexity; interacting multiple model filter; maneuvering target tracking; measurement noise parameters; nonlinear observations; parameter estimation; sequential Monte Carlo methods; state estimation; target trajectory; Adaptation models; Approximation methods; Bayes methods; Monte Carlo methods; Parameter estimation; Target tracking; Vectors; Sequential Monte Carlo methods; joint state and parameter estimation; nonlinear systems; particle learning; tracking maneuvering targets;
fLanguage
English
Journal_Title
Signal Processing, IEEE Transactions on
Publisher
ieee
ISSN
1053-587X
Type
jour
DOI
10.1109/TSP.2013.2296278
Filename
6692890
Link To Document