Semantic analysis of multimodal video aims to index segments of interest at a conceptual level. In reaching this goal, it requires an analysis of several information streams. At some point in the analysis these streams need to be fused. In this paper, we consider two classes of fusion schemes, namely early fusion and late fusion. The former fuses modalities in feature space, the latter fuses modalities in semantic space. We show by experiment on 184 hours of broadcast video data and for 20 semantic concepts, that late fusion tends to give slightly better performance for most concepts. However, for those concepts where early fusion performs better the difference is more significant
The ultimate challenge of the semantic multimedia database research is to provide a system that can ...
Earlier this year, a major effort was initiated to study the theoretical and empirical aspects of th...
The automatic analysis and indexing of multimedia content in general domains are im-portant for a va...
Oral session 1: WS21 - Workshop on Information Fusion in Computer Vision for Concept RecognitionInte...
This paper gives an overview of approaches to video representation targeting semantic analysis for c...
Research Doctorate - Doctor of Philosophy (PhD)This thesis investigates the problem of seeking multi...
International audienceIn this paper we investigate the performance of visual features in the context...
This paper surveys the approaches to video representation, focusing on semantic analysis for content...
In this paper we describe methods for automatic labeling of highlevel semantic concepts in documenta...
Abstract In this paper we describe a multi-strategy approach to improving semantic extraction from n...
WOS: 000285690200007Multimedia documents involves some data such as images, text, audio and video. I...
We propose the time interval multimedia event (TIME) framework as a robust approach for classificati...
In this paper we describe a hybrid approach to improving semantic extraction from news video. Experi...
Considerable research has been devoted to utilizing multimodal features for better understanding mul...
Cette thèse consiste à explorer l'usage d'outils de support de la sémantique des données dans le dom...
The ultimate challenge of the semantic multimedia database research is to provide a system that can ...
Earlier this year, a major effort was initiated to study the theoretical and empirical aspects of th...
The automatic analysis and indexing of multimedia content in general domains are im-portant for a va...
Oral session 1: WS21 - Workshop on Information Fusion in Computer Vision for Concept RecognitionInte...
This paper gives an overview of approaches to video representation targeting semantic analysis for c...
Research Doctorate - Doctor of Philosophy (PhD)This thesis investigates the problem of seeking multi...
International audienceIn this paper we investigate the performance of visual features in the context...
This paper surveys the approaches to video representation, focusing on semantic analysis for content...
In this paper we describe methods for automatic labeling of highlevel semantic concepts in documenta...
Abstract In this paper we describe a multi-strategy approach to improving semantic extraction from n...
WOS: 000285690200007Multimedia documents involves some data such as images, text, audio and video. I...
We propose the time interval multimedia event (TIME) framework as a robust approach for classificati...
In this paper we describe a hybrid approach to improving semantic extraction from news video. Experi...
Considerable research has been devoted to utilizing multimodal features for better understanding mul...
Cette thèse consiste à explorer l'usage d'outils de support de la sémantique des données dans le dom...
The ultimate challenge of the semantic multimedia database research is to provide a system that can ...
Earlier this year, a major effort was initiated to study the theoretical and empirical aspects of th...
The automatic analysis and indexing of multimedia content in general domains are im-portant for a va...