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영상콘텐츠 시청자의 몰입상황 분석을 위한 몰입감정상태 연구

A Study on Flow-emotion-state for Analyzing Flow-situation of Video Content Viewers

  • Kim, Seunghwan (Dept. of Design., Graduate School, Pusan National University) ;
  • Kim, Cheolki (Dept. of Design., College of Art, Pusan National University)
  • 투고 : 2017.09.28
  • 심사 : 2018.01.26
  • 발행 : 2018.03.31

초록

It is required for today's video contents to interact with a viewer in order to provide more personalized experience to viewer(s) than before. In order to do so by providing friendly experience to a viewer from video contents' systemic perspective, understanding and analyzing the situation of the viewer have to be preferentially considered. For this purpose, it is effective to analyze the situation of a viewer by understanding the state of the viewer based on the viewer' s behavior(s) in the process of watching the video contents, and classifying the behavior(s) into the viewer's emotion and state during the flow. The term 'Flow-emotion-state' presented in this study is the state of the viewer to be assumed based on the emotions that occur subsequently in relation to the target video content in a situation which the viewer of the video content is already engaged in the viewing behavior. This Flow-emotion-state of a viewer can be expected to be utilized to identify characteristics of the viewer's Flow-situation by observing and analyzing the gesture and the facial expression that serve as the input modality of the viewer to the video content.

키워드

참고문헌

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