UNT at ImageCLEF 2010: CLIR for Wikipedia Images Metadata
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Title
- Main Title UNT at ImageCLEF 2010: CLIR for Wikipedia Images
Creator
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Author: Ruiz, Miguel E.Creator Type: PersonalCreator Info: University of North Texas
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Author: Chen, JiangpingCreator Type: PersonalCreator Info: University of North Texas
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Author: Pasupathy, KarthikeyanCreator Type: PersonalCreator Info: University of North Texas
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Author: Chin, PokCreator Type: PersonalCreator Info: University of North Texas
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Author: Knudson, RyanCreator Type: PersonalCreator Info: University of North Texas
Date
- Creation: 2010-09
Language
- English
Description
- Content Description: This paper presents the results of the team of the University of North Texas in the Wikipedia image retrieval track of Image-CLEF-2010.
- Physical Description: 6 p.
Subject
- Keyword: Wikipedia images
- Keyword: translations
- Keyword: Language Models
Source
- Conference: Conference on Multilingual and Multimodal Information Access Evaluation, September 20-23, 2010. Padua, Italy
Collection
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Name: UNT Scholarly WorksCode: UNTSW
Institution
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Name: UNT College of InformationCode: UNTCOI
Rights
- Rights Access: public
Resource Type
- Paper
Format
- Text
Identifier
- Archival Resource Key: ark:/67531/metadc96836
Degree
- Academic Department: Library and Information Science
Note
- Display Note: Abstract: This paper presents the results of the team of the University of North Texas in the Wikipedia image retrieval track of Image-CLEF-2010. The authors' approach is based on performing translation of the French and German image captions to English and using of Language Models for generating their runs. The authors also explore the use of complex queries by asking two users to manually build queries based on the original topics distributed. The authors' results indicate that the approach of translating the image captions is feasible and yields results that are quite competitive with other teams that participated in the same track.