Learning Interpretable Representation for Controllable Polyphonic Music Generation

08/17/2020
by   Ziyu Wang, et al.
0

While deep generative models have become the leading methods for algorithmic composition, it remains a challenging problem to control the generation process because the latent variables of most deep-learning models lack good interpretability. Inspired by the content-style disentanglement idea, we design a novel architecture, under the VAE framework, that effectively learns two interpretable latent factors of polyphonic music: chord and texture. The current model focuses on learning 8-beat long piano composition segments. We show that such chord-texture disentanglement provides a controllable generation pathway leading to a wide spectrum of applications, including compositional style transfer, texture variation, and accompaniment arrangement. Both objective and subjective evaluations show that our method achieves a successful disentanglement and high quality controlled music generation.

READ FULL TEXT

page 4

page 6

research
08/25/2021

AccoMontage: Accompaniment Arrangement via Phrase Selection and Style Transfer

Accompaniment arrangement is a difficult music generation task involving...
research
09/15/2021

BacHMMachine: An Interpretable and Scalable Model for Algorithmic Harmonization for Four-part Baroque Chorales

Algorithmic harmonization - the automated harmonization of a musical pie...
research
09/29/2019

MG-VAE: Deep Chinese Folk Songs Generation with Specific Regional Style

Regional style in Chinese folk songs is a rich treasure that can be used...
research
06/02/2023

Q A: Query-Based Representation Learning for Multi-Track Symbolic Music re-Arrangement

Music rearrangement is a common music practice of reconstructing and rec...
research
11/10/2022

Vis2Mus: Exploring Multimodal Representation Mapping for Controllable Music Generation

In this study, we explore the representation mapping from the domain of ...
research
04/18/2019

Inspecting and Interacting with Meaningful Music Representations using VAE

Variational Autoencoders(VAEs) have already achieved great results on im...
research
10/11/2021

Evaluation of Latent Space Disentanglement in the Presence of Interdependent Attributes

Controllable music generation with deep generative models has become inc...

Please sign up or login with your details

Forgot password? Click here to reset