Machine Learning for a Music Glove Instrument

01/27/2020
by   Joseph Bakarji, et al.
0

A music glove instrument equipped with force sensitive, flex and IMU sensors is trained on an electric piano to learn note sequences based on a time series of sensor inputs. Once trained, the glove is used on any surface to generate the sequence of notes most closely related to the hand motion. The data is collected manually by a performer wearing the glove and playing on an electric keyboard. The feature space is designed to account for the key hand motion, such as the thumb-under movement. Logistic regression along with bayesian belief networks are used learn the transition probabilities from one note to another. This work demonstrates a data-driven approach for digital musical instruments in general.

READ FULL TEXT
research
05/30/2022

Proper Posture: Designing Posture Feedback Across Musical Instruments

There is a recommended body posture and hand position for playing every ...
research
07/11/2020

Transformer-XL Based Music Generation with Multiple Sequences of Time-valued Notes

Current state-of-the-art AI based classical music creation algorithms su...
research
08/29/2018

Extended playing techniques: The next milestone in musical instrument recognition

The expressive variability in producing a musical note conveys informati...
research
03/28/2017

Deep scattering transform applied to note onset detection and instrument recognition

Automatic Music Transcription (AMT) is one of the oldest and most well-s...
research
05/05/2018

Weakly-supervised Visual Instrument-playing Action Detection in Videos

Instrument playing is among the most common scenes in music-related vide...
research
03/28/2023

Adaptive Background Music for a Fighting Game: A Multi-Instrument Volume Modulation Approach

This paper presents our work to enhance the background music (BGM) in Da...
research
10/15/2019

Body as controller

In the process of developing a new digital music interface, the author f...

Please sign up or login with your details

Forgot password? Click here to reset