DocumentCode :
784150
Title :
Efficient Multitarget Visual Tracking Using Random Finite Sets
Author :
Maggio, Emilio ; Taj, Murtaza ; Cavallaro, Andrea
Author_Institution :
Multimedia & Vision Group, Univ. of London, London
Volume :
18
Issue :
8
fYear :
2008
Firstpage :
1016
Lastpage :
1027
Abstract :
We propose a filtering framework for multitarget tracking that is based on the probability hypothesis density (PHD) filter and data association using graph matching. This framework can be combined with any object detectors that generate positional and dimensional information of objects of interest. The PHD filter compensates for missing detections and removes noise and clutter. Moreover, this filter reduces the growth in complexity with the number of targets from exponential to linear by propagating the first-order moment of the multitarget posterior, instead of the full posterior. In order to account for the nature of the PHD propagation, we propose a novel particle resampling strategy and we adapt dynamic and observation models to cope with varying object scales. The proposed resampling strategy allows us to use the PHD filter when a priori knowledge of the scene is not available. Moreover, the dynamic and observation models are not limited to the PHD filter and can be applied to any Bayesian tracker that can handle state-dependent variances. Extensive experimental results on a large video surveillance dataset using a standard evaluation protocol show that the proposed filtering framework improves the accuracy of the tracker, especially in cluttered scenes.
Keywords :
filtering theory; graph theory; image denoising; image fusion; image matching; image sampling; object detection; probability; random processes; target tracking; video surveillance; Bayesian tracker; clutter removal; data association; filtering framework; first-order moment; graph matching; multitarget visual tracking; noise removal; object detection; particle resampling strategy; probability hypothesis density filter; random finite set; video surveillance; Monte Carlo; PHD filter; Surveillance; probability hypothesis density (PHD) filter; surveillance; tracking;
fLanguage :
English
Journal_Title :
Circuits and Systems for Video Technology, IEEE Transactions on
Publisher :
ieee
ISSN :
1051-8215
Type :
jour
DOI :
10.1109/TCSVT.2008.928221
Filename :
4559597
Link To Document :
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