DocumentCode :
2292846
Title :
Progressive correction for regularized particle filters
Author :
Oudjane, N. ; Musso, C.
Author_Institution :
DTIM/MCT, ONERA, Chatillon, France
Volume :
2
fYear :
2000
fDate :
10-13 July 2000
Abstract :
Particle methods have been recently proposed to deal with the nonlinear filtering problem. These are Monte Carlo methods that can provide a nonparametric approximation to the signal conditional distribution even in nonlinear and non Gaussian cases, without depending on the state space dimension. We present a new version of regularized particle filter using a progressive correction (PC) principle which improves the approximation, in introducing a decreasing sequence of (fictitious) matrices for the observation noise. This method is applied to the multisensor tracking problem (radar and IR sensor) and compared to the classical regularized particle filter and the EKF.
Keywords :
Monte Carlo methods; error correction; nonlinear filters; radar tracking; sensor fusion; EKF; IR sensor; Monte Carlo methods; classical regularized particle filter; decreasing sequence; fictitious matrices; multisensor tracking problem; non Gaussian cases; nonlinear filtering problem; nonparametric approximation; observation noise; particle methods; progressive correction; progressive correction principle; radar; regularized particle filter; regularized particle filters; signal conditional distribution; state space dimension; Density measurement; Distributed computing; Filtering; Infrared sensors; Kernel; Particle filters; Particle measurements; Particle tracking; Probability distribution; Random variables;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Information Fusion, 2000. FUSION 2000. Proceedings of the Third International Conference on
Conference_Location :
Paris, France
Print_ISBN :
2-7257-0000-0
Type :
conf
DOI :
10.1109/IFIC.2000.859873
Filename :
859873
Link To Document :
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