2023
DOI: 10.3390/s23073437
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Deep Reinforcement Learning for Articulatory Synthesis in a Vowel-to-Vowel Imitation Task

Abstract: Articulatory synthesis is one of the approaches used for modeling human speech production. In this study, we propose a model-based algorithm for learning the policy to control the vocal tract of the articulatory synthesizer in a vowel-to-vowel imitation task. Our method does not require external training data, since the policy is learned through interactions with the vocal tract model. To improve the sample efficiency of the learning, we trained the model of speech production dynamics simultaneously with the p… Show more

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