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Speaker-Independent Acoustic-to-Articulatory Speech Inversion

Peter Wu, Liwei Chen, Cheol Jun Cho, Shinji Watanabe, Louis Goldstein, Alan W. Black, Gopala K. Anumanchipalli

202317 citationsDOI

Abstract

To build speech processing methods that can handle speech as naturally as humans, researchers have explored multiple ways of building an invertible mapping from speech to an interpretable space. The articulatory space is a promising inversion target, since this space captures the mechanics of speech production. To this end, we build an acoustic-to-articulatory inversion (AAI) model that leverages autoregression, adversarial training, and self supervision to generalize to unseen speakers. Our approach obtains 0.784 correlation on an electromagnetic articulography (EMA) dataset, improving the state-of-the-art by 12.5%. Additionally, we show the interpretability of these representations through directly com-paring the behavior of estimated representations with speech production behavior. Finally, we propose a resynthesis-based AAI evaluation metric that does not rely on articulatory labels, demonstrating its efficacy with an 18-speaker dataset.

Topics & Concepts

InterpretabilitySpeech productionComputer scienceSpeech recognitionInversion (geology)Speech processingMetric (unit)Autoregressive modelAcoustic spaceArtificial intelligenceNatural language processingMathematicsAcousticsPaleontologyEconometricsPhysicsStructural basinEconomicsOperations managementAcoustic waveBiologySpeech Recognition and SynthesisPhonetics and Phonology ResearchSpeech and Audio Processing
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