Tracking relations between moving objects is a big challenge for Computer Vision research. Relations can be useful to better understand the behaviors of the targets, and the prediction of trajectories can become more accurate. Moreover, they can be useful in a variety of situations like monitoring terrorist activities, anomaly detection, sport coaching, etc. In this paper we propose a model based on Relational Dynamic Bayesian Networks (RDBNs), that uses first-order logic to model particular correlations between objects behaviors, and show that the performance of the prediction increases significantly. In our experiments we consider the problem of multi-target tracking on a highway where the behavior of targets is often correlated to the behavior of the targets near to them. We compare the performance of a Particle Filter that does not take into account relations between objects and the performance of a Particle Filter that makes inference over the proposed RDBN. We show that our method can follow the targets path more closely than the standard methods, being able to better predict their behaviors while decreasing the complexity of the tracker task.

Manfredotti, C., Messina, V. (2009). Relational dynamic bayesian networks to improve multi-target tracking. In 11th International Conference on Advanced Concepts for Intelligent Vision Systems, ACIVS 2009; Bordeaux; France; 28 September 2009 through 2 October 2009 (pp.528-539). Bordeaux : Jacques Blanc-Talon, Wilfried Philips, Dan C. Popescu, Paul Scheunders [10.1007/978-3-642-04697-1_49].

Relational dynamic bayesian networks to improve multi-target tracking

MANFREDOTTI, CRISTINA ELENA;MESSINA, VINCENZINA
2009

Abstract

Tracking relations between moving objects is a big challenge for Computer Vision research. Relations can be useful to better understand the behaviors of the targets, and the prediction of trajectories can become more accurate. Moreover, they can be useful in a variety of situations like monitoring terrorist activities, anomaly detection, sport coaching, etc. In this paper we propose a model based on Relational Dynamic Bayesian Networks (RDBNs), that uses first-order logic to model particular correlations between objects behaviors, and show that the performance of the prediction increases significantly. In our experiments we consider the problem of multi-target tracking on a highway where the behavior of targets is often correlated to the behavior of the targets near to them. We compare the performance of a Particle Filter that does not take into account relations between objects and the performance of a Particle Filter that makes inference over the proposed RDBN. We show that our method can follow the targets path more closely than the standard methods, being able to better predict their behaviors while decreasing the complexity of the tracker task.
paper
tracking; Dynamic Bayesian Networks; particle filtering
English
11th International Conference on Advanced Concepts for Intelligent Vision Systems, ACIVS 2009
2009
Blanc-Talon, J; Philips, W; Popescu, D; Scheunders, P
11th International Conference on Advanced Concepts for Intelligent Vision Systems, ACIVS 2009; Bordeaux; France; 28 September 2009 through 2 October 2009
978-3-642-04696-4
2009
5807
528
539
none
Manfredotti, C., Messina, V. (2009). Relational dynamic bayesian networks to improve multi-target tracking. In 11th International Conference on Advanced Concepts for Intelligent Vision Systems, ACIVS 2009; Bordeaux; France; 28 September 2009 through 2 October 2009 (pp.528-539). Bordeaux : Jacques Blanc-Talon, Wilfried Philips, Dan C. Popescu, Paul Scheunders [10.1007/978-3-642-04697-1_49].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/8890
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