MusIAC: An extensible generative framework for Music Infilling
Applications with multi-level Control
- URL: http://arxiv.org/abs/2202.05528v1
- Date: Fri, 11 Feb 2022 10:02:21 GMT
- Title: MusIAC: An extensible generative framework for Music Infilling
Applications with multi-level Control
- Authors: Rui Guo, Ivor Simpson, Chris Kiefer, Thor Magnusson, Dorien Herremans
- Abstract summary: Infilling refers to the task of generating musical sections given the surrounding multi-track music.
The proposed framework is for new control tokens as the added control tokens such as tonal tension per bar and track polyphony level.
We present the model in a Google Colab notebook to enable interactive generation.
- Score: 11.811562596386253
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We present a novel music generation framework for music infilling, with a
user friendly interface. Infilling refers to the task of generating musical
sections given the surrounding multi-track music. The proposed
transformer-based framework is extensible for new control tokens as the added
music control tokens such as tonal tension per bar and track polyphony level in
this work. We explore the effects of including several musically meaningful
control tokens, and evaluate the results using objective metrics related to
pitch and rhythm. Our results demonstrate that adding additional control tokens
helps to generate music with stronger stylistic similarities to the original
music. It also provides the user with more control to change properties like
the music texture and tonal tension in each bar compared to previous research
which only provided control for track density. We present the model in a Google
Colab notebook to enable interactive generation.
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