Title :
Collaborative tracking of multiple targets
Author :
Yu, Ting ; Wu, Ying
Author_Institution :
Dept. of Electr. & Comput. Eng., Northwestern Univ., Evanston, IL, USA
fDate :
27 June-2 July 2004
Abstract :
Coalescence, meaning the tracker associates more than one trajectories to some targets while loses track for others, is a challenging problem for visual tracking of multiple targets, especially when similar targets move close or present occlusions. Existing approaches that are based on joint data association are confronted by the combinatorial complexity due to the concatenation of the state spaces of individual targets. This paper presents a novel collaborative approach with linear complexity to the coalescence problem. The basic idea is the collaborative inference mechanism, in which the estimate of an individual target is not only determined by its own observation and dynamics, but also through the interaction and collaboration with the estimates of its adjacent targets, which leads to a competition mechanism that enables different targets to compete for the common image observations. The theoretical foundation of the new approach is based on Markov networks. Variational analysis of this Markov network reveals a mean field approximation to the posterior density of each target, therefore provides a computationally efficient way for such a difficult inference problem. In addition, a mean field Monte Carlo (MFMC) algorithm is designed to achieve Bayesian inference by simulating the competition among a set of low dimensional particle filters. Compared with the existing solutions, the proposed new collaborative approach stands out by its effectiveness and low computational cost to the coalescence problem, as pronounced in the extensive experiments.
Keywords :
Markov processes; Monte Carlo methods; approximation theory; belief networks; filtering theory; inference mechanisms; state estimation; target tracking; variational techniques; video signal processing; Bayesian inference; Markov networks; coalescence problem; collaborative inference mechanism; collaborative tracking; combinatorial complexity; image observations; individual target estimation; joint data association; linear complexity; low dimensional particle filters; mean field Monte Carlo algorithm; mean field approximation; multiple target tracking; state space representation; variational analysis; visual tracking; Algorithm design and analysis; Collaboration; Computer networks; Inference algorithms; Inference mechanisms; Markov random fields; Monte Carlo methods; State-space methods; Target tracking; Trajectory;
Conference_Titel :
Computer Vision and Pattern Recognition, 2004. CVPR 2004. Proceedings of the 2004 IEEE Computer Society Conference on
Print_ISBN :
0-7695-2158-4
DOI :
10.1109/CVPR.2004.1315118