International audienceIn this paper, we compare active learning strategies for indexing concepts in video shots. Active learning is simulated using subsets of a fully annotated dataset instead of actually calling for user intervention. Training is done using the collaborative annotation of 39 concepts of the TRECVID 2005 campaign. Performance is measured on the 20 concepts selected for the TRECVID 2006 concept detection task. The simulation allows exploring the effect of several parameters: the strategy, the annotated fraction of the dataset, the size of the dataset, the number of iterations and the relative difficulty of concepts
We introduce the challenge problem for generic video indexing to gain insight in intermediate steps ...
Learning of classifiers to be used as filters within the analytical rea-soning process leads to new ...
In this paper we describe our TRECVID 2008 video retrieval experiments. The MediaMill team participa...
International audienceIn this paper, we compare active learning strategies for indexing concepts in ...
International audienceIn this paper, we compare active learning strategies for indexing concepts in ...
Video indexing, also called video concept detection, has attracted increasing attentions from both a...
International audienceWe propose and evaluate in this paper a combination of Active Learning and Mul...
International audienceConcept indexing in multimedia libraries is very useful for users searching an...
International audienceIn this paper, we evaluated and compared multi-learner approaches for concept ...
Session MultimédiaNational audienceVideo retrieval can be done by ranking the samples according to t...
Regular Papers: Multimedia Indexing and MiningInternational audienceActive learning with multiple cl...
The authors developed an extensible system for video exploitation that puts the user in control to b...
Conventional multimedia annotation/retrieval systems such as Normalized Continuous Relevance Model (...
International audienceConcept indexing in multimedia libraries is very useful for users searching an...
Existing video search engines have not taken the advantages of video content analysis and semantic u...
We introduce the challenge problem for generic video indexing to gain insight in intermediate steps ...
Learning of classifiers to be used as filters within the analytical rea-soning process leads to new ...
In this paper we describe our TRECVID 2008 video retrieval experiments. The MediaMill team participa...
International audienceIn this paper, we compare active learning strategies for indexing concepts in ...
International audienceIn this paper, we compare active learning strategies for indexing concepts in ...
Video indexing, also called video concept detection, has attracted increasing attentions from both a...
International audienceWe propose and evaluate in this paper a combination of Active Learning and Mul...
International audienceConcept indexing in multimedia libraries is very useful for users searching an...
International audienceIn this paper, we evaluated and compared multi-learner approaches for concept ...
Session MultimédiaNational audienceVideo retrieval can be done by ranking the samples according to t...
Regular Papers: Multimedia Indexing and MiningInternational audienceActive learning with multiple cl...
The authors developed an extensible system for video exploitation that puts the user in control to b...
Conventional multimedia annotation/retrieval systems such as Normalized Continuous Relevance Model (...
International audienceConcept indexing in multimedia libraries is very useful for users searching an...
Existing video search engines have not taken the advantages of video content analysis and semantic u...
We introduce the challenge problem for generic video indexing to gain insight in intermediate steps ...
Learning of classifiers to be used as filters within the analytical rea-soning process leads to new ...
In this paper we describe our TRECVID 2008 video retrieval experiments. The MediaMill team participa...