In several application areas, such as human computer interaction, surveillance and defence, determining the intent of a tracked object enables systems to aid the user/operator and facilitate effective, possibly automated, decision making. In this paper, we propose a probabilistic inference approach that permits the prediction, well in advance, of the intended destination of a tracked object and its future trajectory. Within the framework introduced here, the observed partial track of the object is modeled as being part of a Markov bridge terminating at its destination, since the target path, albeit random, must end at the intended endpoint. This captures the underlying long term dependencies in the trajectory, as dictated by the object inte...
This paper proposes a probabilistic framework for the sequential estimation of the likelihood of a d...
Using interactive displays, such as a touchscreen, in vehicles typically requires dedicating a consi...
AbstractIn order to effectively plan paths in environments inhabited by humans, robots must accurate...
In several application areas, such as human computer interaction, surveillance and defence, determin...
Engineering Department, University of Cambridge, Trumpington Street, Cambridge, UK, CB2 1PZ In this ...
This thesis presents work on the development of model-based Bayesian approaches to object tracking a...
This letter presents an alternative, more consistent, construction for bridging distributions, which...
The motion of a tracked object often has long term underlying dependencies due to premeditated actio...
Abstract In various scenarios, the motion of a tracked object, for example, a pointing apparatus, pe...
This paper introduces a Bayesian framework for estimating the probability of a driver or passenger(s...
In this paper, we present a Bayesian framework for manoeuvring object tracking and intent prediction...
© 2015 IEEE. Contextual cues can provide a rich source of information for robots that operate in the...
This paper proposes a state estimation and prediction for tracking guided targets using intent infor...
The motion of an object (e.g. ship, jet, pedestrian, bird, drone, etc.) is usually governed by preme...
Using interactive displays, such as a touchscreen, in vehicles typically requires dedicating a consi...
This paper proposes a probabilistic framework for the sequential estimation of the likelihood of a d...
Using interactive displays, such as a touchscreen, in vehicles typically requires dedicating a consi...
AbstractIn order to effectively plan paths in environments inhabited by humans, robots must accurate...
In several application areas, such as human computer interaction, surveillance and defence, determin...
Engineering Department, University of Cambridge, Trumpington Street, Cambridge, UK, CB2 1PZ In this ...
This thesis presents work on the development of model-based Bayesian approaches to object tracking a...
This letter presents an alternative, more consistent, construction for bridging distributions, which...
The motion of a tracked object often has long term underlying dependencies due to premeditated actio...
Abstract In various scenarios, the motion of a tracked object, for example, a pointing apparatus, pe...
This paper introduces a Bayesian framework for estimating the probability of a driver or passenger(s...
In this paper, we present a Bayesian framework for manoeuvring object tracking and intent prediction...
© 2015 IEEE. Contextual cues can provide a rich source of information for robots that operate in the...
This paper proposes a state estimation and prediction for tracking guided targets using intent infor...
The motion of an object (e.g. ship, jet, pedestrian, bird, drone, etc.) is usually governed by preme...
Using interactive displays, such as a touchscreen, in vehicles typically requires dedicating a consi...
This paper proposes a probabilistic framework for the sequential estimation of the likelihood of a d...
Using interactive displays, such as a touchscreen, in vehicles typically requires dedicating a consi...
AbstractIn order to effectively plan paths in environments inhabited by humans, robots must accurate...