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Development of Online Video Mash-up System based on Automatic Scene Elements Composition using Storyboard
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  • Journal title : Journal of Broadcast Engineering
  • Volume 21, Issue 4,  2016, pp.525-537
  • Publisher : The Korean Institute of Broadcast and Media Engineers
  • DOI : 10.5909/JBE.2016.21.4.525
 Title & Authors
Development of Online Video Mash-up System based on Automatic Scene Elements Composition using Storyboard
Park, Jongbin; Kim, Kyung-Won; Jung, Jong-Jin; Lim, Tae-Beom;
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In this paper, we develop an online video mash-up system which use automatic scene elements composition scheme using a storyboard. There are two conventional online video production schemes. Video collage method is simple and easy, but it was difficult to reflect narrative or story. Another way is a template based method which usually select a template and it replaces resources such as photos or videos in the template. However, if the related templates do not exist, there are limitations that cannot create the desired output. In addition, the quality and atmosphere of the output is too dependent on the template. To solve these problems, we propose a video mash-up scheme using storyboard and we also implement a classification and recommendation scheme based on topic modeling.
Storyboard;Video Mash-up;Scene composition;Topic Modeling;Template;
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