MeloForm: Generating Melody with Musical Form based on Expert Systems and Neural Networks

Peiling Lu, Xu Tan, Botao Yu, Tao Qin, Sheng Zhao, Tie-Yan Liu
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引用次数: 5

Abstract

Human usually composes music by organizing elements according to the musical form to express music ideas. However, for neural network-based music generation, it is difficult to do so due to the lack of labelled data on musical form. In this paper, we develop MeloForm, a system that generates melody with musical form using expert systems and neural networks. Specifically, 1) we design an expert system to generate a melody by developing musical elements from motifs to phrases then to sections with repetitions and variations according to pre-given musical form; 2) considering the generated melody is lack of musical richness, we design a Transformer based refinement model to improve the melody without changing its musical form. MeloForm enjoys the advantages of precise musical form control by expert systems and musical richness learning via neural models. Both subjective and objective experimental evaluations demonstrate that MeloForm generates melodies with precise musical form control with 97.79% accuracy, and outperforms baseline systems in terms of subjective evaluation score by 0.75, 0.50, 0.86 and 0.89 in structure, thematic, richness and overall quality, without any labelled musical form data. Besides, MeloForm can support various kinds of forms, such as verse and chorus form, rondo form, variational form, sonata form, etc.
MeloForm:基于专家系统和神经网络的曲式旋律生成
人类通常根据音乐形式组织各种元素来表达音乐思想。然而,对于基于神经网络的音乐生成,由于缺乏音乐形式的标记数据,很难做到这一点。在本文中,我们开发了MeloForm,一个利用专家系统和神经网络生成曲式旋律的系统。具体而言,1)我们设计了一个专家系统,根据预先给定的音乐形式,通过从母题到短语再到具有重复和变化的部分来发展音乐元素,从而生成旋律;2)考虑到生成的旋律缺乏音乐丰富性,设计了一个基于Transformer的优化模型,在不改变旋律曲式的前提下对旋律进行改进。MeloForm具有专家系统的精确曲式控制和神经模型的音乐丰富性学习的优势。主观和客观的实验评估表明,MeloForm生成的旋律具有精确的曲式控制,准确率为97.79%,在没有任何标记的曲式数据的情况下,在结构、主题性、丰富性和整体质量方面的主观评价得分分别比基线系统高0.75、0.50、0.86和0.89。此外,MeloForm还支持多种曲式,如主副歌曲式、回旋曲曲式、变分曲式、奏鸣曲曲式等。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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