Book chapter
GENA: A Case-Based Approach to the Generation of Audio-Visual Narratives
Case-Based Reasoning Research and Development, pp 297-311
2012
Abstract
This paper presents GENA, a case-based reasoning system capable of generating audio-visual narratives by drawing from previously annotated content. Broadcast networks spend a large amount of resources in covering many events and many different types of audiences. However, it is not reasonable for them to cover smaller events or audiences, for which the cost would be greater than the potential benefits. For that reason, it is interesting to design systems that could automatically generate summaries, or personalized news shows for these smaller events or audiences. GENA was designed in collaboration with Televisió de Catalunya (the public Catalan broadcaster) precisely to address this problem. This paper describes GENA, and the techniques that were designed to address the complexities of the problem of generating audio-visual narrative. We also present an experimental evaluation in the domain of sports.
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Details
- Title
- GENA: A Case-Based Approach to the Generation of Audio-Visual Narratives
- Creators
- Santiago Ontañón - Drexel UniversityJosep Lluís Arcos - Artificial Intelligence Research InstituteJosep Puyol-Gruart - Artificial Intelligence Research InstituteEusebio Carasusán - Televisió de Catalunya, Carrer de Jacint Verdaguer, Sant Joan Despí, SpainDaniel Giribet - Televisió de Catalunya, Carrer de Jacint Verdaguer, Sant Joan Despí, SpainDavid de la Cruz - Artificial Intelligence Research InstituteIsmel Brito - Artificial Intelligence Research InstituteCarlos Lopez del Toro - Artificial Intelligence Research Institute
- Publication Details
- Case-Based Reasoning Research and Development, pp 297-311
- Series
- Lecture Notes in Computer Science
- Publisher
- Springer Berlin Heidelberg; Berlin, Heidelberg
- Resource Type
- Book chapter
- Language
- English
- Academic Unit
- Computer Science (Computing)
- Scopus ID
- 2-s2.0-84866665298
- Other Identifier
- 991021869011504721