论文标题

Relyme:通过结合抒情关系来改善抒情液的生成

ReLyMe: Improving Lyric-to-Melody Generation by Incorporating Lyric-Melody Relationships

论文作者

Zhang, Chen, Chang, Luchin, Wu, Songruoyao, Tan, Xu, Qin, Tao, Liu, Tie-Yan, Zhang, Kejun

论文摘要

抒情性的生成是根据给定的歌词产生旋律的,是最重要的自动音乐作品任务之一。随着深度学习的快速发展,以前的工作通过端到端的神经网络模型解决了这项任务。但是,深度学习模型不能很好地捕捉歌词和旋律之间的严格但微妙的关系,这损害了歌词和产生的旋律之间的和谐。在本文中,我们提出了Relyme,该方法结合了音乐理论的歌词和旋律之间的关系,以确保歌词和旋律之间的和谐。具体来说,我们首先介绍了几种原则,即歌词和旋律应在语调,节奏和结构关系方面遵循。然后,通过在解码过程中添加相应的约束来改善歌词和旋律之间的和谐,然后将这些原理整合到神经网络抒情模型中。我们使用一系列客观和主观指标来评估产生的旋律。英语和中文歌曲数据集的实验显示了Relyme的有效性,这表明了将音乐领域的抒情赛关系融合到神经抒情术的产生中的优势。

Lyric-to-melody generation, which generates melody according to given lyrics, is one of the most important automatic music composition tasks. With the rapid development of deep learning, previous works address this task with end-to-end neural network models. However, deep learning models cannot well capture the strict but subtle relationships between lyrics and melodies, which compromises the harmony between lyrics and generated melodies. In this paper, we propose ReLyMe, a method that incorporates Relationships between Lyrics and Melodies from music theory to ensure the harmony between lyrics and melodies. Specifically, we first introduce several principles that lyrics and melodies should follow in terms of tone, rhythm, and structure relationships. These principles are then integrated into neural network lyric-to-melody models by adding corresponding constraints during the decoding process to improve the harmony between lyrics and melodies. We use a series of objective and subjective metrics to evaluate the generated melodies. Experiments on both English and Chinese song datasets show the effectiveness of ReLyMe, demonstrating the superiority of incorporating lyric-melody relationships from the music domain into neural lyric-to-melody generation.

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