International audienceThe ontology is an efficient tool that can bridge the semantic gap between the extracted information from the visual data and its interpretation in a given context. The ontology has been used in video surveillance applications to improve the accuracy of the indexing and retrieval system. However, these systems handle only one or two objects without considering events that involve multiple objects. In this paper, we propose to use OVIS (Ontology based Video surveillance Indexing and retrieval System) a system for indexing and retrieving videos in video surveillance application. We have applied OVIS to videos that contain multiple objects events (e.g. Group walking, Group splitting, Group formation, etc.)
During the last decades the interest in the development of surveillance systems capable of autonomou...
During the last decades the interest in the development of surveillance systems capable of autonomou...
As demonstrated in several research contexts, some of the best performing state of the art algorithm...
International audienceIn this paper, we propose the use of a Video-surveillance Ontology and a rule-...
International audienceIn this paper, we propose the use of a Video-surveillance Ontology and a rule-...
International audienceNowadays, the diversity and large deployment of video recorders results in a l...
International audienceNowadays, the diversity and large deployment of video recorders results in a l...
Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses...
We propose a framework for surveillance video indexing and retrieval using objects features and sema...
International audienceIn this paper, we propose an approach for surveillance video indexing and retr...
During the last decades the interest in the development of surveillance systems capable of autonomou...
During the last decades the interest in the development of surveillance systems capable of autonomou...
During the last decades the interest in the development of surveillance systems capable of autonomou...
As demonstrated in several research contexts, some of the best performing state of the art algorithm...
As demonstrated in several research contexts, some of the best performing state of the art algorithm...
During the last decades the interest in the development of surveillance systems capable of autonomou...
During the last decades the interest in the development of surveillance systems capable of autonomou...
As demonstrated in several research contexts, some of the best performing state of the art algorithm...
International audienceIn this paper, we propose the use of a Video-surveillance Ontology and a rule-...
International audienceIn this paper, we propose the use of a Video-surveillance Ontology and a rule-...
International audienceNowadays, the diversity and large deployment of video recorders results in a l...
International audienceNowadays, the diversity and large deployment of video recorders results in a l...
Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses...
We propose a framework for surveillance video indexing and retrieval using objects features and sema...
International audienceIn this paper, we propose an approach for surveillance video indexing and retr...
During the last decades the interest in the development of surveillance systems capable of autonomou...
During the last decades the interest in the development of surveillance systems capable of autonomou...
During the last decades the interest in the development of surveillance systems capable of autonomou...
As demonstrated in several research contexts, some of the best performing state of the art algorithm...
As demonstrated in several research contexts, some of the best performing state of the art algorithm...
During the last decades the interest in the development of surveillance systems capable of autonomou...
During the last decades the interest in the development of surveillance systems capable of autonomou...
As demonstrated in several research contexts, some of the best performing state of the art algorithm...