自动转向分割电影和电视字幕

Pierre Lison, R. Meena
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引用次数: 23

摘要

电影和电视字幕包含大量的会话材料,但缺乏明确的回合结构。本文提出了一种数据驱动的字幕分词方法。训练数据首先通过将字幕与文本对齐来提取,以获得说话人标签。然后使用该数据构建一个分类器,其任务是确定两个连续的句子是否属于同一对话回合的一部分。该方法依赖于从字幕本身提取的语言、视觉和时间特征,不需要访问视听材料——尽管在音频数据可用时可以利用说话人拨号。该方法还利用与其他语言中相关字幕的对齐来进一步提高分类性能。该分类器在hold -out测试集上实现了78%的准确率。后续的注释实验表明,对于人类注释者来说,这项任务也很困难。
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Automatic turn segmentation for Movie & TV subtitles
Movie and TV subtitles contain large amounts of conversational material, but lack an explicit turn structure. This paper present a data-driven approach to the segmentation of subtitles into dialogue turns. Training data is first extracted by aligning subtitles with transcripts in order to obtain speaker labels. This data is then used to build a classifier whose task is to determine whether two consecutive sentences are part of the same dialogue turn. The approach relies on linguistic, visual and timing features extracted from the subtitles themselves and does not require access to the audiovisual material - although speaker diarization can be exploited when audio data is available. The approach also exploits alignments with related subtitles in other languages to further improve the classification performance. The classifier achieves an accuracy of 78 % on a held-out test set. A follow-up annotation experiment demonstrates that this task is also difficult for human annotators.
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