用机器学习生成当代音乐体裁节奏

Q2 Arts and Humanities Journal of Creative Music Systems Pub Date : 2022-05-17 DOI:10.5920/jcms.902
Gabriel Vigliensoni, Louis McCallum, Esteban Maestre, R. Fiebrink
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引用次数: 0

摘要

在这篇文章中,我们提出了一种定制变分自动编码器(VAE)神经网络的研究,以学习模型并在潜在空间内演奏编码的音乐节奏。该系统使用的数据结构能够以简单和复合的节拍对节奏进行编码,并且可以从少量的训练数据中学习模型。为了促进模型的探索,我们实现了一个可视化工具,它依赖于脉动节奏模式的动态特性。为了在现实音乐实践中测试我们的系统,我们收集了当代音乐流派节奏的小规模数据集,并用它们训练模型。我们发现,学习到的潜在空间的非线性,加上与模型互动的触觉界面,非常有表现力,并在作曲和现场表演音乐环境中产生意想不到的地方。录制了一张音乐专辑,并在一个大型音乐节上使用舞台上的VAE潜在空间进行了首演。
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Contemporary music genre rhythm generation with machine learning
In this article, we present research on customizing a variational autoencoder (VAE) neural network to learn models and play with musical rhythms encoded within a latent space. The system uses a data structure that is capable of encoding rhythms in simple and compound meter and can learn models from little training data. To facilitate the exploration of models, we implemented a visualizer that relies on the dynamic nature of the pulsing rhythmic patterns. To test our system in real-life musical practice, we collected small-scale datasets of contemporary music genre rhythms and trained models with them. We found that the non-linearities of the learned latent spaces coupled with tactile interfaces to interact with the models were very expressive and lead to unexpected places in composition and live performance musical settings. A music album was recorded and it was premiered at a major music festival using the VAE latent space on stage.
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来源期刊
Journal of Creative Music Systems
Journal of Creative Music Systems Arts and Humanities-Music
CiteScore
1.20
自引率
0.00%
发文量
8
审稿时长
12 weeks
期刊最新文献
Title Pending 1311 Oktoechos Classification and Generation of Liturgical Music using Deep Learning Frameworks Editorial: JCMS Special Issue of the first Conference on AI Music Creativity Contemporary music genre rhythm generation with machine learning Deep Music Information Dynamics Novel Framework for Reduced Neural-Network Music Representation with Applications to Midi and Audio Analysis and Improvisation
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