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Speaker- and Text-Independent Estimation of Articulatory Movements and Phoneme Alignments from Speech

Authors :
Weise, Tobias
Klumpp, Philipp
Demir, Kubilay Can
Pérez-Toro, Paula Andrea
Schuster, Maria
Noeth, Elmar
Heismann, Bjoern
Maier, Andreas
Yang, Seung Hee
Publication Year :
2024

Abstract

This paper introduces a novel combination of two tasks, previously treated separately: acoustic-to-articulatory speech inversion (AAI) and phoneme-to-articulatory (PTA) motion estimation. We refer to this joint task as acoustic phoneme-to-articulatory speech inversion (APTAI) and explore two different approaches, both working speaker- and text-independently during inference. We use a multi-task learning setup, with the end-to-end goal of taking raw speech as input and estimating the corresponding articulatory movements, phoneme sequence, and phoneme alignment. While both proposed approaches share these same requirements, they differ in their way of achieving phoneme-related predictions: one is based on frame classification, the other on a two-staged training procedure and forced alignment. We reach competitive performance of 0.73 mean correlation for the AAI task and achieve up to approximately 87% frame overlap compared to a state-of-the-art text-dependent phoneme force aligner.<br />Comment: to be published in Interspeech 2024 proceedings

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2407.03132
Document Type :
Working Paper