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Classification and Recommendation of Scene Templates for PR Video Making Service based on Strategic Meta Information
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  • Journal title : Journal of Broadcast Engineering
  • Volume 20, Issue 6,  2015, pp.848-861
  • Publisher : The Korean Institute of Broadcast and Media Engineers
  • DOI : 10.5909/JBE.2015.20.6.848
 Title & Authors
Classification and Recommendation of Scene Templates for PR Video Making Service based on Strategic Meta Information
Park, Jongbin; Lee, Han-Duck; Kim, Kyung-Won; Jung, Jong-Jin; Lim, Tae-Beom;
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 Abstract
In this paper, we introduce a new web-based PR video making service system. Many video editing tools have required tough editing skill or scenario planning stage for a just simple PR video making. Some users may prefer a simple and fast way than sophisticated and complex functionality. To solve this problem, it is important to provide easy user interface and intelligent classification and recommendation scheme. Therefore, we propose a new template classification and recommendation scheme using a topic modeling method. The proposed scheme has the big advantage of being able to handle the unstructured meta data as well as structured one.
 Keywords
Video;Classification;Recommendation;Topic;Modeling;Scene;Template;
 Language
Korean
 Cited by
1.
Development of Online Video Mash-up System based on Automatic Scene Elements Composition using Storyboard, Journal of Broadcast Engineering, 2016, 21, 4, 525  crossref(new windwow)
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