Online multi-person tracking in image sequences is commonly guided by recursive filters, whose predictive models define the expected positions of future states. When a predictive model deviates too much from the true motion of a pedestrian, which is often the case in crowded scenes due to unpredicted accelerations, the data association is prone to fail. In this paper we propose a novel predictive model on the basis of Gaussian Process Regression. The model takes into account the motion of every tracked pedestrian in the scene and the prediction is executed with respect to the velocities of all interrelated persons. As shown by the experiments, the model is capable of yielding more plausible predictions even in the presence of mutual occlusi...
As mobile robots start operating in environments crowded with humans, human-aware navigation is requ...
Human interaction dynamics are known to play an important role in the develop-ment of robust pedestr...
For safe navigation in dynamic environments, an autonomous vehicle must be able to identify and pred...
Online multi-person tracking in image sequences is commonly guided by recursive filters, whose predi...
Most existing multi-person tracking approaches are affected by lighting condition, pedestrian pose c...
We propose a non-parametric model for pedestrian motion based on Gaussian Process regression, in whi...
Multiple-pedestrian tracking in unconstrained environments is an important task that has received co...
Abstract—We present a multiple-person tracking algo-rithm, based on combining particle filters and R...
We present a multiple-person tracking algorithm, based on combining particle fi lters and RVO, an ag...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
Multi-object tracking a b s t r a c t Human interaction dynamics are known to play an important role...
Both detection and tracking people are challenging problems, especially in complex real world scenes...
Both detection and tracking people are challenging problems, especially in complex real world scenes...
This paper addresses the use of social behavior models for the prediction of a pedestrian's future m...
Tracking of moving people has gained a matter of great importance due to rapid technological advance...
As mobile robots start operating in environments crowded with humans, human-aware navigation is requ...
Human interaction dynamics are known to play an important role in the develop-ment of robust pedestr...
For safe navigation in dynamic environments, an autonomous vehicle must be able to identify and pred...
Online multi-person tracking in image sequences is commonly guided by recursive filters, whose predi...
Most existing multi-person tracking approaches are affected by lighting condition, pedestrian pose c...
We propose a non-parametric model for pedestrian motion based on Gaussian Process regression, in whi...
Multiple-pedestrian tracking in unconstrained environments is an important task that has received co...
Abstract—We present a multiple-person tracking algo-rithm, based on combining particle filters and R...
We present a multiple-person tracking algorithm, based on combining particle fi lters and RVO, an ag...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
Multi-object tracking a b s t r a c t Human interaction dynamics are known to play an important role...
Both detection and tracking people are challenging problems, especially in complex real world scenes...
Both detection and tracking people are challenging problems, especially in complex real world scenes...
This paper addresses the use of social behavior models for the prediction of a pedestrian's future m...
Tracking of moving people has gained a matter of great importance due to rapid technological advance...
As mobile robots start operating in environments crowded with humans, human-aware navigation is requ...
Human interaction dynamics are known to play an important role in the develop-ment of robust pedestr...
For safe navigation in dynamic environments, an autonomous vehicle must be able to identify and pred...