Title :
A hybrid parametric, non-parametric approach to Bayesian target tracking
Author :
Black, John V. ; Reed, Colin M.
Author_Institution :
DRA, Malvern, UK
Abstract :
This article describes a versatile approach to nonlinear, nonGaussian noise target tracking which makes use of both parametric and nonparametric techniques within a Bayesian framework. It produces a Gaussian mixture model (GMM) of a track, but resorts to a sampling technique within the tracking process to handle nonlinearity. GMMs are recovered from samples using the expectation-maximisation method. The approach has been implemented in PV-WAVE software and tested against a Kalman-filter tracker in a simulator with air-defence scenarios. Sample results are presented for a scenario with a single surveillance-radar and a single target following a weaving path. These show that the tracker produces significantly better position estimates and comparable heading and speed estimates. Computation times are about 30 times greater than for the Kalman-filter tracker, but there is scope for reducing that substantially by tolerating fewer samples
Keywords :
Bayes methods; noise; optimisation; statistical analysis; target tracking; tracking; Bayesian target tracking; Gaussian mixture model; Kalman-filter tracker; PV-WAVE software; air-defence scenarios; expectation-maximisation method; nonlinear nonGaussian noise target tracking; nonlinearity; nonparametric techniques; parametric techniques; surveillance radar; Bayesian methods; Economic forecasting; Linearity; Maximum likelihood estimation; Probability distribution; Sampling methods; Software testing; State estimation; Target tracking; Weaving;
Conference_Titel :
Data Fusion Symposium, 1996. ADFS '96., First Australian
Conference_Location :
Adelaide, SA
Print_ISBN :
0-7803-3601-1
DOI :
10.1109/ADFS.1996.581103