Title :
Calibration of tracking systems using detections from non-cooperative targets
Author :
Ristic, Branko ; Clark, Daniel E. ; Gordon, Neil
Author_Institution :
ISR Div., DSTO, Fishermans Bend, VIC, Australia
Abstract :
Tracking algorithms are based on models: target dynamic and sensor measurement model. In most practical situations the two models are not known exactly and are typically parametrised by an unknown random vector θ. The paper proposes a Bayesian algorithm based on importance sampling for the estimation of θ. The input are detections/measurements collected by the tracking system from non-cooperative targets. The algorithm relies on the particle filter implementation of the probability density hypothesis (PHD) filter to evaluate the likelihood of the measurement set history conditioned on θ. As a byproduct, the proposed algorithm can also output a multi-target state estimate over time. An application to sensor bias estimation is presented in detail as an illustration. The resulting sensor-bias estimation method is applicable to asynchronous sensors and does not require prior knowledge of measurement-to-track associations.
Keywords :
Bayes methods; calibration; importance sampling; particle filtering (numerical methods); random processes; sensors; signal detection; state estimation; target tracking; Bayesian algorithm; PHD filter; asynchronous sensor; calibration; importance sampling; measurement set history; multitarget state estimate; noncooperative target detection; particle filter; probability density hypothesis; random vector; sensor bias estimation; sensor measurement model; target dynamic; tracking algorithm; tracking system; Approximation methods; Bayesian methods; Calibration; Estimation; Monte Carlo methods; Target tracking; Vectors;
Conference_Titel :
Sensor Data Fusion: Trends, Solutions, Applications (SDF), 2012 Workshop on
Conference_Location :
Bonn
Print_ISBN :
978-1-4673-3010-7
DOI :
10.1109/SDF.2012.6327903