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CVPR
2010
IEEE

Taxonomic Classification for Web-based Videos

13 years 8 months ago
Taxonomic Classification for Web-based Videos
Categorizing web-based videos is an important yet challenging task. The difficulties arise from large data diversity within a category, lack of labeled data, and degradation of video quality. This paper presents a large scale video taxonomic classification scheme (with more than 1000 categories) tackling these issues. Taxonomic structure of categories is deployed in classifier training. To compensate for the lack of labeled video data, a novel method is proposed to adapt the web-text documents trained classifiers to video domain so that the availability of a large corpus of labeled text documents can be leveraged. Video content based features are integrated with text-based features to gain power in the case of degradation of one type of features. Evaluation on videos from hundreds of categories shows that the proposed algorithms generate significant performance improvement over text classifiers or classifiers trained using only video content based features.
Yang Song, Ming Zhao, Jay Yagnik, Xiaoyun Wu
Added 02 Aug 2010
Updated 02 Aug 2010
Type Conference
Year 2010
Where CVPR
Authors Yang Song, Ming Zhao, Jay Yagnik, Xiaoyun Wu
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