Target tracking is the estimation of the state of one or multiple, usually moving, objects (targets) based on a time series of measurements. Widely addressed within the Bayesian statistical framework, it requires the modeling of the target state evolution and the measurement process. Information on the constraints posed by the context in which the target evolves and the measurement geometry is often available. This knowledge can be modeled, often in a statistical way, and integrated in the tracking filters to enhance their performance. This chapter presents several approaches to exploit different types of context knowledge and demonstrates context-enhanced tracking based on real and simulated data. Numerical results are given for the inclus...
This paper presents a novel approach to incorporate multiple contextual factors into a tracking proc...
Proceedings of: NATO Advanced Research Workshop on Human Systems Integration to Enhance Maritime Dom...
Proceedings of: Geospatial InfoFusion III. 2-3 May 2013 Baltimore, Maryland, United States.Many info...
The general focus of this paper is the improvement of state-of-the-art Bayesian tracking filters spe...
Over the last decade, context has become a key source of information for tracking problems. Context...
Gaussian mixtures (GM) provide a flexible and numerically robust means for the treatment of nonlinea...
Bayesian non-linear filtering is considered in this paper for the state vector estimation of manoeuv...
Complex and dynamic environments constitute a challenge for existing tracking algorithms. For this r...
Many information fusion solutions work well in the intended scenarios; but the applications, support...
The inclusion of contextual information in low-level fusion processes is a promising research direct...
Classical target tracking operates on a fast time-scale (order of seconds) during which target dynam...
In this paper, an automated methodology that builds a profile for each pedestrian tracked based on i...
This thesis presents work on the development of model-based Bayesian approaches to object tracking a...
In this work we address the problem of multilevel context representation and exploitation for target...
International audienceIn this contribution, we propose to use road and lane information as contextua...
This paper presents a novel approach to incorporate multiple contextual factors into a tracking proc...
Proceedings of: NATO Advanced Research Workshop on Human Systems Integration to Enhance Maritime Dom...
Proceedings of: Geospatial InfoFusion III. 2-3 May 2013 Baltimore, Maryland, United States.Many info...
The general focus of this paper is the improvement of state-of-the-art Bayesian tracking filters spe...
Over the last decade, context has become a key source of information for tracking problems. Context...
Gaussian mixtures (GM) provide a flexible and numerically robust means for the treatment of nonlinea...
Bayesian non-linear filtering is considered in this paper for the state vector estimation of manoeuv...
Complex and dynamic environments constitute a challenge for existing tracking algorithms. For this r...
Many information fusion solutions work well in the intended scenarios; but the applications, support...
The inclusion of contextual information in low-level fusion processes is a promising research direct...
Classical target tracking operates on a fast time-scale (order of seconds) during which target dynam...
In this paper, an automated methodology that builds a profile for each pedestrian tracked based on i...
This thesis presents work on the development of model-based Bayesian approaches to object tracking a...
In this work we address the problem of multilevel context representation and exploitation for target...
International audienceIn this contribution, we propose to use road and lane information as contextua...
This paper presents a novel approach to incorporate multiple contextual factors into a tracking proc...
Proceedings of: NATO Advanced Research Workshop on Human Systems Integration to Enhance Maritime Dom...
Proceedings of: Geospatial InfoFusion III. 2-3 May 2013 Baltimore, Maryland, United States.Many info...