Symbolic Music Generation with Diffusion Models
Abstract
Score-based generative models and diffusion probabilistic models have been successful at generating high-quality samples in continuous domains such as images and audio. However, due to their Langevin-inspired sampling mechanisms, their application to discrete and sequential data has been limited. In this work, we present a technique for training diffusion models on sequential data by parameterizing the discrete domain in the continuous latent space of a pre-trained variational autoencoder. Our method is non-autoregressive and learns to generate sequences of latent embeddings through the reverse process and offers parallel generation with a constant number of iterative refinement steps. We apply this technique to modeling symbolic music and show strong unconditional generation and post-hoc conditional infilling results compared to autoregressive language models operating over the same continuous embeddings.
Cite
@article{arxiv.2103.16091,
title = {Symbolic Music Generation with Diffusion Models},
author = {Gautam Mittal and Jesse Engel and Curtis Hawthorne and Ian Simon},
journal= {arXiv preprint arXiv:2103.16091},
year = {2021}
}
Comments
ISMIR 2021