SOTAVerified

Metrical-accent Aware Vocal Onset Detection in Polyphonic Audio

2017-07-19Code Available0· sign in to hype

Georgi Dzhambazov, Andre Holzapfel, Ajay Srinivasamurthy, Xavier Serra

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

The goal of this study is the automatic detection of onsets of the singing voice in polyphonic audio recordings. Starting with a hypothesis that the knowledge of the current position in a metrical cycle (i.e. metrical accent) can improve the accuracy of vocal note onset detection, we propose a novel probabilistic model to jointly track beats and vocal note onsets. The proposed model extends a state of the art model for beat and meter tracking, in which a-priori probability of a note at a specific metrical accent interacts with the probability of observing a vocal note onset. We carry out an evaluation on a varied collection of multi-instrument datasets from two music traditions (English popular music and Turkish makam) with different types of metrical cycles and singing styles. Results confirm that the proposed model reasonably improves vocal note onset detection accuracy compared to a baseline model that does not take metrical position into account.

Tasks

Reproductions