Title :
Bernoulli Particle/Box-Particle Filters for Detection and Tracking in the Presence of Triple Measurement Uncertainty
Author :
Gning, Amadou ; Ristic, Branko ; Mihaylova, Lyudmila
Author_Institution :
Sch. of Comput. & Commun., Lancaster Univ., Lancaster, UK
fDate :
5/1/2012 12:00:00 AM
Abstract :
This work presents sequential Bayesian detection and estimation methods for nonlinear dynamic stochastic systems using measurements affected by three sources of uncertainty: stochastic, set-theoretic and data association uncertainty. Following Mahler´s framework for information fusion, the paper develops the optimal Bayes filter for this problem in the form of the Bernoulli filter for interval measurements. Two numerical implementations of the optimal filter are developed. The first is the Bernoulli particle filter (PF), which turns out to require a large number of particles in order to achieve a satisfactory performance. For the sake of reduction in the number of particles, the paper also develops an implementation based on box particles, referred to as the Bernoulli Box-PF. A box particle is a random sample that occupies a small and controllable rectangular region of nonzero volume in the target state space. Manipulation of boxes utilizes the methods of interval analysis. The two implementations are compared numerically and found to perform remarkably well: the target is reliably detected and the posterior probability density function of the target state is estimated accurately. The Bernoulli Box-PF, however, when designed carefully, is computationally more efficient.
Keywords :
Bayes methods; particle filtering (numerical methods); sensor fusion; set theory; stochastic processes; target tracking; Bernoulli filter; Bernoulli particle filter; box-particle filter; data association uncertainty; estimation method; information fusion; interval analysis; nonlinear dynamic stochastic system; optimal Bayes filter; posterior probability density function; sequential Bayesian detection; set-theoretic uncertainty; triple measurement uncertainty; Atmospheric measurements; Measurement uncertainty; Niobium; Noise measurement; Particle measurements; Probability density function; Uncertainty; Bernoulli filter; box particle filters; interval measurements; particle filters; random sets; sequential Bayesian estimation;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2012.2184538