为音频故事生成情感相关的乐谱

Steve Rubin, Maneesh Agrawala
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引用次数: 23

摘要

高制作的音频故事通常包括反映演讲情绪的乐谱。然而,制作有效的乐谱需要深厚的声音制作专业知识,即使对专家来说也是费时的。我们提出了一种系统和算法,用于重新排序音乐轨道,以生成与音频故事情感相关的乐谱。用户提供语音音轨和音乐音轨,我们的系统通过手工标记、众包和自动方法收集语音上的情感标签。我们开发了一种基于约束的动态规划算法,该算法使用这些情感标签来生成与情感相关的乐谱。我们通过为音频故事生成20个乐谱来证明我们算法的有效性,并表明人群工作者对其整体质量的评价明显高于没有音乐的故事。
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Generating emotionally relevant musical scores for audio stories
Highly-produced audio stories often include musical scores that reflect the emotions of the speech. Yet, creating effective musical scores requires deep expertise in sound production and is time-consuming even for experts. We present a system and algorithm for re-sequencing music tracks to generate emotionally relevant music scores for audio stories. The user provides a speech track and music tracks and our system gathers emotion labels on the speech through hand-labeling, crowdsourcing, and automatic methods. We develop a constraint-based dynamic programming algorithm that uses these emotion labels to generate emotionally relevant musical scores. We demonstrate the effectiveness of our algorithm by generating 20 musical scores for audio stories and showing that crowd workers rank their overall quality significantly higher than stories without music.
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