A probabilistic framework for content-based interactive video retrieval is described. The developed indexing of video fragments originates from the probability of the user's positive judgment about key-frames of video shots. Initial estimates of the probabilities are obtained from low-level feature representation. Only statistically significant estimates are picked out, the rest are replaced by an appropriate constant allowing efficient access at search time without loss of search quality and leading to improvement in most experiments. With time, these probability estimates are updated from the relevance judgment of users performing searches, resulting in further substantial increases in mean average precision
We propose a probabilistic model for image retrieval. To obtain the similarity between the query ima...
We propose using truncated object-object similarity matrix as an access structure for interactive vi...
This paper proposes a novel scheme for bridging the gap between low level media features and high le...
In this paper we explore a new view on data organisation and retrieval in a (multimedia) collection....
Our experiments for TRECVID 2004 further investigate the applicability of the so-called “Generative ...
The amount of multimedia content increases at a tremendous speed every day -- enabled by ever simple...
In this chapter we address two approaches to extract high-level concepts from video footage and show...
International audienceWe propose an original approach for the characterization of video dynamic cont...
Contains fulltext : 228223.pdf (publisher's version ) (Closed access
Recent content-based video retrieval systems combine output of concept detectors (also known as high...
textabstractWe describe the application of a probabilistic multimedia model to video retrieval. From...
This report describes an original approach for content-based video indexing and retrieval. We provid...
Abstract: Content based multimedia retrieval is an important topic in database sys-tems. An emerging...
International audienceThis paper describes an original approach for content-based video indexing and...
In this presentation we present a system for interactive search in video archives. In our view inter...
We propose a probabilistic model for image retrieval. To obtain the similarity between the query ima...
We propose using truncated object-object similarity matrix as an access structure for interactive vi...
This paper proposes a novel scheme for bridging the gap between low level media features and high le...
In this paper we explore a new view on data organisation and retrieval in a (multimedia) collection....
Our experiments for TRECVID 2004 further investigate the applicability of the so-called “Generative ...
The amount of multimedia content increases at a tremendous speed every day -- enabled by ever simple...
In this chapter we address two approaches to extract high-level concepts from video footage and show...
International audienceWe propose an original approach for the characterization of video dynamic cont...
Contains fulltext : 228223.pdf (publisher's version ) (Closed access
Recent content-based video retrieval systems combine output of concept detectors (also known as high...
textabstractWe describe the application of a probabilistic multimedia model to video retrieval. From...
This report describes an original approach for content-based video indexing and retrieval. We provid...
Abstract: Content based multimedia retrieval is an important topic in database sys-tems. An emerging...
International audienceThis paper describes an original approach for content-based video indexing and...
In this presentation we present a system for interactive search in video archives. In our view inter...
We propose a probabilistic model for image retrieval. To obtain the similarity between the query ima...
We propose using truncated object-object similarity matrix as an access structure for interactive vi...
This paper proposes a novel scheme for bridging the gap between low level media features and high le...