P5-05: MeloForm: Generating Melody with Musical Form based on Expert Systems and Neural Networks
Lu, Peiling*, Tan, Xu, Yu, Botao, Qin, Tao, Zhao, Sheng, Liu, Tie-Yan
Subjects (starting with primary): Domain knowledge -> machine learning/artificial intelligence for music ; Applications -> music composition ; MIR tasks -> music generation ; Musical features and properties -> structure, segmentation, and form
Presented Virtually: 4-minute short-format presentation
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.