International audienceWe investigate the use of structure learning in Bayesian networks for a complex multimodal task of action detection in soccer videos. We illustrate that classical score-oriented structure learning algorithms, such as the K2 one whose usefulness has been demonstrated on simple tasks, fail in providing a good network structure for classification tasks where many correlated observed variables are necessary to make a decision. We then compare several structure learning objective functions, which aim at finding out the structure that yields the best classification results, extending existing solutions in the literature. Experimental results on a comprehensive data set of 7 videos show that a discriminative objective functio...
In this thesis we present a system for detection of events in video. First a multiview approach to a...
AbstractIn this paper, we model multi-agent events in terms of a temporally varying sequence of sub-...
Graduation date: 2014This dissertation addresses the problem of recognizing human activities in vide...
International audienceWe investigate the use of structure learning in Bayesian networks for a comple...
The task of understanding video content has seen great interest from computer vision community with ...
Detecting actions in videos is still a demanding task due to large intra-class variation caused by v...
[[abstract]]Video semantic analysis is formulated based on the low-level image features and the high...
A core challenge in action recognition from videos is obtaining sufficient training examples to trai...
International audienceThis paper presents a violent shots detection system that studies several meth...
Summary. As digital video data becomes more and more pervasive, the issue of mining information from...
In this paper, we model multi-agent events in terms of a temporally varying sequence of sub-events, ...
Bayesian networks are an attractive modeling tool for human sensing, as they combine an intuitive gr...
In this paper, we model multi-agent events in terms of a temporally varying sequence of sub-events, ...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
This paper presents a general methodology for learning articulated motions that, despite having non-...
In this thesis we present a system for detection of events in video. First a multiview approach to a...
AbstractIn this paper, we model multi-agent events in terms of a temporally varying sequence of sub-...
Graduation date: 2014This dissertation addresses the problem of recognizing human activities in vide...
International audienceWe investigate the use of structure learning in Bayesian networks for a comple...
The task of understanding video content has seen great interest from computer vision community with ...
Detecting actions in videos is still a demanding task due to large intra-class variation caused by v...
[[abstract]]Video semantic analysis is formulated based on the low-level image features and the high...
A core challenge in action recognition from videos is obtaining sufficient training examples to trai...
International audienceThis paper presents a violent shots detection system that studies several meth...
Summary. As digital video data becomes more and more pervasive, the issue of mining information from...
In this paper, we model multi-agent events in terms of a temporally varying sequence of sub-events, ...
Bayesian networks are an attractive modeling tool for human sensing, as they combine an intuitive gr...
In this paper, we model multi-agent events in terms of a temporally varying sequence of sub-events, ...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
This paper presents a general methodology for learning articulated motions that, despite having non-...
In this thesis we present a system for detection of events in video. First a multiview approach to a...
AbstractIn this paper, we model multi-agent events in terms of a temporally varying sequence of sub-...
Graduation date: 2014This dissertation addresses the problem of recognizing human activities in vide...