基于场景聚类的电视剧情节去交错研究

Philippe Ercolessi, Christine Sénac, H. Bredin
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引用次数: 13

摘要

电视剧的每一集通常会同时出现多个子故事。我们提出了几种基于场景聚类的情节去隔行化方法的变体——最终目标是为最终用户提供快速简单地概述一集、一季或整个电视剧的工具。每个场景都可以用三种不同的方式来描述(基于颜色直方图、说话者dialarization或自动语音识别输出),并研究了四种聚类方法,其中一种方法基于视频的图形表示。在两部不同长度和格式的电视剧上进行了实验。我们证明了语义描述符(如说话人dialarization)给出了最好的结果,并强调我们的方法为情节去隔行化提供了有用的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Toward plot de-interlacing in TV series using scenes clustering
Multiple sub-stories usually coexist in every episode of a TV series. We propose several variants of an approach for plot de-interlacing based on scenes clustering - with the ultimate goal of providing the end-user with tools for fast and easy overview of one episode, one season or the whole TV series. Each scene can be described in three different ways (based on color histograms, speaker diarization or automatic speech recognition outputs) and four clustering approaches are investigated, one of them based on a graphical representation of the video. Experiments are performed on two TV series of different lengths and formats. We show that semantic descriptors (such as speaker diarization) give the best results and underline that our approach provides useful information for plot de-interlacing.
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