Exploring relationships between effort, motion, and sound in new musical instruments
Abstract
We investigated how the action–sound relationships found in electric guitar
performance can be used in the design of new instruments. Thirty-one trained guitarists
performed a set of basic sound-producing actions (impulsive, sustained, and iterative) and
free improvisations on an electric guitar. We performed a statistical analysis of the muscle
activation data (EMG) and audio recordings from the experiment. Then we trained a long
short-term memory network with nine different configurations to map EMG signal to sound.
We found that the preliminary models were able to predict audio energy features of free
improvisations on the guitar, based on the dataset of raw EMG from the basic soundproducing actions. The results provide evidence of similarities between body motion and
sound in music performance, compatible with embodied music cognition theories. They also
show the potential of using machine learning on recorded performance data in the design of
new musical instruments.
Main Authors
Format
Articles
Journal article
Published
2020
Series
Subjects
Publisher
Jyväskylän Yliopisto
The permanent address of the publication
https://urn.fi/URN:NBN:fi:jyu-202012117076Käytä tätä linkitykseen.
DOI
https://doi.org/10.17011/ht/urn.202011256767
Review status
Peer reviewed
ISSN
1795-6889
Language
English
Published in
Human Technology: An Interdisciplinary Journal on Humans in ICT Environments
Citation
- Erdem, Çağrı; Lan, Qichao; Jensenius, Alexander Refsum (2020). Exploring relationships between effort, motion, and sound in new musical instruments. Human Technology, 16 (3), 310-347. DOI: 10.17011/ht/urn.202011256767
Copyright©2020 Çağrı Erdem, Qichao Lan, & Alexander Refsum Jensenius, and the Open Science Centre, University of Jyväskylä