一个仅使用字幕自动生成电影预告片的框架

Eslam Amer, Ayman M. Nabil
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引用次数: 0

摘要

随着万维网上用户生成视频的速度的快速增长,用户高效地浏览视频变得非常必要。视频摘要通过识别和选择视频的描述帧,被认为是有效实现视频内容的一种有前途和有效的方法。本文提出了一种名为智能预告片(S-Trailer)的自适应框架,用于仅通过相关字幕为任何电影创建预告片的自动化过程。建议的框架只使用英文字幕作为使用语言。s - trailer解析字幕文件,提取有意义的文本特征,用于将电影分类为相应的类型。对真实电影的实验表明,所提出的框架在将电影分类为相关类型方面返回了相当高的分类准确率(0.89)。引入的框架生成了一个自动预告片,在回忆原始电影预告片上发布的相同场景方面,平均准确率约为43%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Framework to Automate the generation of movies' trailers using only subtitles
With the rapidly increasing rate of user-generated videos over the World Wide Web, it becoming a high necessity for users to navigate through them efficiently. Video summarization is considered to be one of the promising and effective approach for efficacious realization of video content by means of identifying and selecting descriptive frames of the video. In this paper, a proposed adaptive framework called Smart-Trailer (S-Trailer) is introduced to automatize the process of creating a movie trailer for any movie through its associated subtitles only. The proposed framework utilizes only English subtitles to be the language of usage. S-Trailer resolves the subtitle file to extract meaningful textual features that used to classify the movie into its corresponding genre(s). Experimentations on real movies showed that the proposed framework returns a considerable classification accuracy rate (0.89) to classify movies into their associated genre(s). The introduced framework generates an automated trailer that contains on average about (43%) accuracy in terms of recalling same scenes issued on the original movie trailer.
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