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http://dx.doi.org/10.15207/JKCS.2018.9.12.033

Emotion Prediction System using Movie Script and Cinematography  

Kim, Jinsu (College of Ari Liberal Arts, Anyang University)
Publication Information
Journal of the Korea Convergence Society / v.9, no.12, 2018 , pp. 33-38 More about this Journal
Abstract
Recently, we are trying to predict the emotion from various information and to convey the emotion information that the supervisor wants to inform the audience. In addition, audiences intend to understand the flow of emotions through various information of non-dialogue parts, such as cinematography, scene background, background sound and so on. In this paper, we propose to extract emotions by mixing not only the context of scripts but also the cinematography information such as color, background sound, composition, arrangement and so on. In other words, we propose an emotional prediction system that learns and distinguishes various emotional expression techniques into dialogue and non-dialogue regions, contributes to the completeness of the movie, and quickly applies them to new changes. The precision of the proposed system is improved by about 5.1% and 0.4%, and the recall is improved by about 4.3% and 1.6%, respectively, when compared with the modified n-gram and morphological analysis.
Keywords
Emotion Prediction; Big Data; Cinematography; Support Vector Machine; Morphological Analysis;
Citations & Related Records
Times Cited By KSCI : 1  (Citation Analysis)
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