Symbolic Music Loop Generation with Neural Discrete Representations

Sangjun Han, H. Ihm, Moontae Lee, Woohyung Lim
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引用次数: 3

Abstract

Since most of music has repetitive structures from motifs to phrases, repeating musical ideas can be a basic operation for music composition. The basic block that we focus on is conceptualized as loops which are essential ingredients of music. Furthermore, meaningful note patterns can be formed in a finite space, so it is sufficient to represent them with combinations of discrete symbols as done in other domains. In this work, we propose symbolic music loop generation via learning discrete representations. We first extract loops from MIDI datasets using a loop detector and then learn an autoregressive model trained by discrete latent codes of the extracted loops. We show that our model outperforms well-known music generative models in terms of both fidelity and diversity, evaluating on random space. Our code and supplementary materials are available at https://github.com/sjhan91/Loop_VQVAE_Official.
基于神经离散表示的符号音乐循环生成
由于大多数音乐都具有从母题到乐句的重复结构,重复音乐思想可以成为音乐创作的基本操作。我们关注的基本块被概念化为循环,这是音乐的基本成分。此外,有意义的音符模式可以在有限的空间中形成,因此用离散符号的组合表示它们就足够了,就像在其他领域所做的那样。在这项工作中,我们提出了通过学习离散表示来生成符号音乐循环。我们首先使用环路检测器从MIDI数据集中提取环路,然后学习由提取的环路的离散潜在代码训练的自回归模型。我们表明,我们的模型在保真度和多样性方面都优于知名的音乐生成模型,在随机空间上进行评估。我们的代码和补充材料可在https://github.com/sjhan91/Loop_VQVAE_Official上获得。
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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