Representing and fusing multimedia information is a key issue to discover semantics in multimedia. In this paper we address more specifically the problem of multimedia content retrieval by first defining a novel preference-based representation particularly adapted to the fusion problem, and then, by investigating the RankBoost algorithm to combine those preferences and a learn multimodal retrieval model. The approach has been tested on annotated images and on the complete TRECVID 2005 corpus and compared with SVMbased fusion strategies. The results show that our approach equals SVM performance but, contrary to SVM, is parameter free and faster
This paper presents a content-based retrieval algorithm which can be used for information retrieval ...
Multimedia information retrieval combines the images and data. Multimedia information retrieval task...
Research on multimedia information retrieval (MIR) has recently witnessed a booming interest. A prom...
Representing and fusing multimedia information is a key issue to discover semantics in multimedia. I...
Abstract—Representing and fusing multimedia informa-tion is a key issue to discover semantics in mul...
An effective retrieval of multimedia data is based on its semantic content. In order to extract the ...
This paper proposes a novel representation space for multimodal information, enabling fast and effic...
Heterogeneous sources of information, such as images, videos, text and metadata are often used to de...
Managing a large volume of multimedia data containing various modalities such as visual, audio, and ...
Comunicació presentada a: ICMR'16. International Conference on Multimedia Retrieval 2016, celebrat a...
We present a new framework for multimedia content analysis and retrieval which consists of two indep...
International audienceThis paper presents an overview of popular retrieval tech- niques based on mac...
This paper presents a novel ranking framework for content-based multimedia information retrieval (CB...
Multimedia collections are more than ever growing in size and diversity. Effective multimedia retrie...
Abstract—Multimedia retrieval suffers from the lack of com-mon feature representation between a text...
This paper presents a content-based retrieval algorithm which can be used for information retrieval ...
Multimedia information retrieval combines the images and data. Multimedia information retrieval task...
Research on multimedia information retrieval (MIR) has recently witnessed a booming interest. A prom...
Representing and fusing multimedia information is a key issue to discover semantics in multimedia. I...
Abstract—Representing and fusing multimedia informa-tion is a key issue to discover semantics in mul...
An effective retrieval of multimedia data is based on its semantic content. In order to extract the ...
This paper proposes a novel representation space for multimodal information, enabling fast and effic...
Heterogeneous sources of information, such as images, videos, text and metadata are often used to de...
Managing a large volume of multimedia data containing various modalities such as visual, audio, and ...
Comunicació presentada a: ICMR'16. International Conference on Multimedia Retrieval 2016, celebrat a...
We present a new framework for multimedia content analysis and retrieval which consists of two indep...
International audienceThis paper presents an overview of popular retrieval tech- niques based on mac...
This paper presents a novel ranking framework for content-based multimedia information retrieval (CB...
Multimedia collections are more than ever growing in size and diversity. Effective multimedia retrie...
Abstract—Multimedia retrieval suffers from the lack of com-mon feature representation between a text...
This paper presents a content-based retrieval algorithm which can be used for information retrieval ...
Multimedia information retrieval combines the images and data. Multimedia information retrieval task...
Research on multimedia information retrieval (MIR) has recently witnessed a booming interest. A prom...