Title :
Asymptotic Optimality of the Maximum-Likelihood Kalman Filter for Bayesian Tracking With Multiple Nonlinear Sensors
Author :
Marelli, Damian ; Minyue Fu ; Ninness, Brett
Author_Institution :
Sch. of Electr. Eng. & Comput. Sci., Univ. of Newcastle, Callaghan, NSW, Australia
Abstract :
Bayesian tracking is a general technique for state estimation of nonlinear dynamic systems, but it suffers from the drawback of computational complexity. This paper is concerned with a class of Wiener systems with multiple nonlinear sensors. Such a system consists of a linear dynamic system followed by a set of static nonlinear measurements. We study a maximum-likelihood Kalman filtering (MLKF) technique which involves maximum-likelihood estimation of the nonlinear measurements followed by classical Kalman filtering. This technique permits a distributed implementation of the Bayesian tracker and guarantees the boundedness of the estimation error. The focus of this paper is to study the extent to which the MLKF technique approximates the theoretically optimal Bayesian tracker. We provide conditions to guarantee that this approximation becomes asymptotically exact as the number of sensors becomes large. Two case studies are analyzed in detail.
Keywords :
Bayes methods; Kalman filters; Wiener filters; distributed sensors; maximum likelihood estimation; state estimation; target tracking; Bayesian tracking; MLKF technique; Wiener systems; asymptotic optimality; maximum-likelihood Kalman filtering technique; maximum-likelihood estimation; multiple nonlinear sensors; nonlinear dynamic systems; nonlinear measurements; state estimation; Approximation methods; Bayes methods; Kalman filters; Mathematical model; Maximum likelihood estimation; Sensors; Signal processing algorithms; Bayesian tracking; Wiener systems; distributed estimation; maximum likelihood; sensor networks;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2015.2440220