International audienceActivity recognition has been a growing research topic in the last years and its application varies from auto-matic recognition of social interaction such as shaking hands, parking lot surveillance, traffic monitoring and the detection of abandoned luggage. This paper describes a probabilistic framework for uncertainty handling in a description-based event recognition approach. The proposed approach allows the flexible modeling of composite events with complex temporal constraints. It uses probability theory to provide a consistent framework for dealing with uncertain knowledge for the recognition of complex events. We validate the event recognition accuracy of the proposed algorithm on real-world videos. The experimen...
International audienceThis paper proposes BEHAVE, a person-centered pipeline for probabilistic event...
Learning event models from videos has applications ranging from abnormal event detection to content ...
Computer scientists have made ceaseless efforts to replicate cognitive video understanding abilities...
Activity recognition has been a growing research topic in the last years and its application varies ...
International audienceThis paper presents a constraint-based approach for video complex event recogn...
This paper presents a constraint-based approach for video event recognition with probabilistic reaso...
This is the author’s version of a work that was accepted for publication in Journal Computer Vision...
Abstract. This paper describes a complex event recognition approach with probabilistic reasoning for...
Symbolic event recognition systems have been successfully applied to a variety of application domain...
Symbolic event recognition systems have been successfully applied to a variety of application domain...
Graduation date: 2011Access restricted to the OSU Community at author's request from May 12, 2011 - ...
This paper presents a multisensor fusion framework for video activities recognition based on statist...
The management of digital video has become a very challenging problem as the amount of video content...
AbstractIn this paper a novel approach for recognizing actions in video sequences is presented, wher...
We propose a combinatorial approach built on Grenander’s pattern theory to generate semantic interpr...
International audienceThis paper proposes BEHAVE, a person-centered pipeline for probabilistic event...
Learning event models from videos has applications ranging from abnormal event detection to content ...
Computer scientists have made ceaseless efforts to replicate cognitive video understanding abilities...
Activity recognition has been a growing research topic in the last years and its application varies ...
International audienceThis paper presents a constraint-based approach for video complex event recogn...
This paper presents a constraint-based approach for video event recognition with probabilistic reaso...
This is the author’s version of a work that was accepted for publication in Journal Computer Vision...
Abstract. This paper describes a complex event recognition approach with probabilistic reasoning for...
Symbolic event recognition systems have been successfully applied to a variety of application domain...
Symbolic event recognition systems have been successfully applied to a variety of application domain...
Graduation date: 2011Access restricted to the OSU Community at author's request from May 12, 2011 - ...
This paper presents a multisensor fusion framework for video activities recognition based on statist...
The management of digital video has become a very challenging problem as the amount of video content...
AbstractIn this paper a novel approach for recognizing actions in video sequences is presented, wher...
We propose a combinatorial approach built on Grenander’s pattern theory to generate semantic interpr...
International audienceThis paper proposes BEHAVE, a person-centered pipeline for probabilistic event...
Learning event models from videos has applications ranging from abnormal event detection to content ...
Computer scientists have made ceaseless efforts to replicate cognitive video understanding abilities...