Title :
Random-point-based filters: analysis and comparison in target tracking
Author :
Dunik, Jindrich ; Straka, Ondrej ; Simandl, Miroslav ; Blasch, Erik
Author_Institution :
Univ. of West Bohemia, Pilsen, Czech Republic
Abstract :
This paper compares state estimation techniques for nonlinear stochastic dynamic systems, which are important for target tracking. Recently, several methods for nonlinear state estimation have appeared utilizing various random-point-based approximations for global filters (e.g., particle filter and ensemble Kalman filter) and local filters (e.g., Monte-Carlo Kalman filter and stochastic integration filters). A special emphasis is placed on derivations, algorithms, and commonalities of these filters. All filters described are put into a common framework, and it is proved that within a single iteration, they provide asymptotically equivalent results. Additionally, some deterministic-point-based filters (e.g., unscented Kalman filter, cubature Kalman filter, and quadrature Kalman filter) are shown to be special cases of a random-point-based filter. The paper demonstrates and compares the filters in three examples, a random variable transformation, re-entry vehicle tracking, and bearings-only tracking. The results show that the stochastic integration filter provides better accuracy than the Monte-Carlo Kalman filter and the ensemble Kalman filter with lower computational costs.
Keywords :
Kalman filters; iterative methods; nonlinear filters; particle filtering (numerical methods); state estimation; target tracking; tracking filters; Monte-Carlo Kalman filter; bearings-only tracking; cubature Kalman filter; deterministic-point-based filters; ensemble Kalman filter; global filters; iteration; local filters; nonlinear state estimation; nonlinear stochastic dynamic systems; particle filter; quadrature Kalman filter; random variable transformation; random-point-based approximations; random-point-based filters; re-entry vehicle tracking; state estimation technique; stochastic integration filter; stochastic integration filters; target tracking; unscented Kalman filter; Approximation methods; Bayes methods; Covariance matrices; Kalman filters; Prediction algorithms; State estimation; Target tracking;
Journal_Title :
Aerospace and Electronic Systems, IEEE Transactions on
DOI :
10.1109/TAES.2014.130136