DocumentCode :
381652
Title :
Discrete-space particle filters for reflecting diffusions
Author :
Ballantyne, David J. ; Kouritzin, Michael A. ; Long, Hongwei ; Sun, Wei
Author_Institution :
Dept. of Math. & Stat. Sci., Alberta Univ., Edmonton, Alta., Canada
Volume :
4
fYear :
2002
fDate :
2002
Abstract :
We consider the low observable filtering problem of detecting and tracking a target buried in high amplitude synthetic spatial observation noise. Motivated by fish farming applications, we constrain our target to live in a rectangular region, undergoing reflections at the boundary of this region, and moving in a manner described by the unique solution to a Skorohod stochastic differential equation. Observations are taken at discrete times and consist of a nonlinear partial function of the current state corrupted by additive noise. We use the reference probability method to describe the solution to this filtering problem in terms of a discrete-time version of the Duncan-Mortensen-Zakai equation and then use Markov chain approximations to produce an implementable approximate solution. The approximations incorporate discretizations of both space and amplitude directly into the unnormalized conditional distribution of the signal given the back observations. These approximations converge to the actual filtering conditional distribution as the discretization mesh is refined. The algorithm to implement our filter is reduced to an algorithm to implement a specific time-inhomogeneous Markov chain, which can be done using a single Poisson process and independent sequences of Bernoulli trials. The inhomogeneity is due to the observations themselves. The discretization of amplitude results in particles representing a small mass of the conditional distribution at particular grid points in the signal domain. These particles diffuse, drift, give birth, and die within the region similarly to those of continuous-state particle filters. The particles include information from the observations through observation-dependent births and deaths. We discuss issues like mean time to localize the target and fidelity of filter estimates at various signal to noise ratios, and give visual demonstrations of filter performance.
Keywords :
Markov processes; aquaculture; convergence of numerical methods; differential equations; diffusion; filtering theory; motion estimation; noise; probability; target tracking; tracking filters; Markov chain approximations; Poisson process; Skorohod stochastic differential equation; additive noise corrupted current state; amplitude discretizations; approximation convergence; conditional distribution mass particle representation; discrete observation times; discrete-space particle filters; discrete-time Duncan-Mortensen-Zakai equation; discretization mesh refinement; filter algorithm; filter estimate fidelity; filter performance; filter signal to noise ratios; filtering conditional distribution; fish farming applications; independent Bernoulli trial sequences; low observable filtering problem; mean target localization time; nonlinear partial function; observation-dependent births; observation-dependent deaths; reference probability method; reflecting diffusions; space discretizations; synthetic spatial observation noise; target boundary reflections; target detection; target movement; target rectangular region constraint; target tracking; time-inhomogeneous Markov chain; unnormalized conditional signal distribution; Acoustic reflection; Additive noise; Differential equations; Filtering; Marine animals; Noise level; Nonlinear equations; Particle filters; Stochastic resonance; Target tracking;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Aerospace Conference Proceedings, 2002. IEEE
Print_ISBN :
0-7803-7231-X
Type :
conf
DOI :
10.1109/AERO.2002.1036878
Filename :
1036878
Link To Document :
بازگشت