Title :
Markov chain Monte Carlo method for evaluating multi-frame data association hypotheses
Author :
Mori, Shozo ; Chong, Chee-Yee
Author_Institution :
BAE Syst., Adv. Inf. Technol., Los Altos, CA
fDate :
June 30 2008-July 3 2008
Abstract :
This paper describes algorithms for probabilistically evaluating multi-frame data-association hypotheses formed in multiple-hypothesis, multiple-target tracking, using Markov chain Monte Carlo (MCMC) methods (also known as sequential Monte Carlo (SMC) methods). Each algorithm is designed to sequentially, randomly generate multi-frame data association hypotheses, and to converge to a stationary process with the a posteriori probabilities of the multi-frame hypotheses, as the stationary (target) probability distribution. The paper explores three sampling designs: the metropolis sampling, the metropolis sampling with Boltzman acceptance probability, and the metropolis-hasting sampling. Their performances are compared with each other and with the hypothesis evaluation obtained by a K-best hypothesis selection algorithm, using two simple examples.
Keywords :
Markov processes; Monte Carlo methods; sensor fusion; target tracking; Boltzman acceptance probability; K-best hypothesis selection algorithm; Markov chain Monte Carlo method; a posteriori probabilities; metropolis sampling; metropolis-hasting sampling; multiframe data association hypotheses; multiple-target tracking; probability distribution; Boltzman acceptance function; Markov chain Monte Carlo method; Metropolis sampling; Metropolis-Hasting sampling; Multiple-target tracking; correlation ambiguity; hypothesis evaluation; multiple-hypothesis tracking; sequential Monte Carlo method;
Conference_Titel :
Information Fusion, 2008 11th International Conference on
Conference_Location :
Cologne
Print_ISBN :
978-3-8007-3092-6
Electronic_ISBN :
978-3-00-024883-2