In this paper, we propose a content selection framework that improves the users` experience when they are enriching or authoring pieces of news. This framework combines a variety of techniques to retrieve semantically related videos, based on a set of criteria which are specified automatically depending on the media`s constraints. The combination of different content selection mechanisms can improve the quality of the retrieved scenes, because each technique`s limitations are minimized by other techniques` strengths. We present an evaluation based on a number of experiments, which show that the retrieved results are better when all criteria are used at time
A challenging problem in the user profiling domain is to create profiles of users of retrieval syste...
This position paper introduces a recommender system which has been developed to study research ques...
In this paper we describe a hybrid approach to improving semantic extraction from news video. Experi...
In this paper, we propose a content selection framework that improves the users` experience when the...
In this paper, a novel framework is developed to support personalized news video recommendation. Fir...
A challenging problem in the user profiling domain is to create profiles of users of retrieval syste...
This paper is concerned with the topic of personalized news assembly at the set-top box, based on au...
Abstract. In this paper, a novel framework is developed to support personalized news video recommend...
This paper is concerned with the topic of personalized news assembly at the set-top box, based on au...
This document presents guidelines on how to setup enriched video experiences. We provide user-centr...
Large volumes of information in video format are being created and made available from a number of a...
The increasing popularity of video sharing platforms such as YouTube and Google Video increase the n...
In this paper we describe a hybrid approach to improving semantic extraction from news video. Experi...
Electronic Program Guides (EPGs) are systems that allow users of media applications, such as web TVs...
To facilitate finding of relevant information in ever-growing multimedia collections, a number of mu...
A challenging problem in the user profiling domain is to create profiles of users of retrieval syste...
This position paper introduces a recommender system which has been developed to study research ques...
In this paper we describe a hybrid approach to improving semantic extraction from news video. Experi...
In this paper, we propose a content selection framework that improves the users` experience when the...
In this paper, a novel framework is developed to support personalized news video recommendation. Fir...
A challenging problem in the user profiling domain is to create profiles of users of retrieval syste...
This paper is concerned with the topic of personalized news assembly at the set-top box, based on au...
Abstract. In this paper, a novel framework is developed to support personalized news video recommend...
This paper is concerned with the topic of personalized news assembly at the set-top box, based on au...
This document presents guidelines on how to setup enriched video experiences. We provide user-centr...
Large volumes of information in video format are being created and made available from a number of a...
The increasing popularity of video sharing platforms such as YouTube and Google Video increase the n...
In this paper we describe a hybrid approach to improving semantic extraction from news video. Experi...
Electronic Program Guides (EPGs) are systems that allow users of media applications, such as web TVs...
To facilitate finding of relevant information in ever-growing multimedia collections, a number of mu...
A challenging problem in the user profiling domain is to create profiles of users of retrieval syste...
This position paper introduces a recommender system which has been developed to study research ques...
In this paper we describe a hybrid approach to improving semantic extraction from news video. Experi...