Estimating vocal tract geometry from acoustic impedance using deep neural network

Author:

B T Balamurali1,Kapoor Saumitra1,Chen Jer-Ming1

Affiliation:

1. Singapore University of Technology and Design, Singapore, ,

Abstract

A data-driven approach using artificial neural networks is proposed to address the classic inverse area function problem, i.e., to determine the vocal tract geometry (modelled as a tube of nonuniform cylindrical cross-sections) from the vocal tract acoustic impedance spectrum. The predicted cylindrical radii and the actual radii were found to have high correlation in the three- and four-cylinder model (Pearson coefficient ( ρ) and Lin concordance coefficient ( ρc) exceeded 95%); however, for the six-cylinder model, the correlation was low ( ρ around 75% and ρc around 69%). Upon standardizing the impedance value, the correlation improved significantly for all cases ( ρ and ρc exceeded 90%).

Publisher

Acoustical Society of America (ASA)

Subject

Electrical and Electronic Engineering,Atomic and Molecular Physics, and Optics

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