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Attention model for articulatory features detection

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abstract

Articulatory distinctive features, as well as phonetic transcription, play important role in speech-related tasks: computer-assisted pronunciation training, text-to-speech conversion (TTS), studying speech production mechanisms, speech recognition for low-resourced languages. End-to-end approaches to speech-related tasks got a lot of traction in recent years. We apply Listen, Attend and Spell~(LAS)~\cite{Chan-LAS2016} architecture to phones recognition on a small small training set, like TIMIT~\cite{TIMIT-1992}. Also, we introduce a novel decoding technique that allows to train manners and places of articulation detectors end-to-end using attention models. We also explore joint phones recognition and articulatory features detection in multitask learning setting.

fields

eess.AS 1

years

2019 1

verdicts

UNVERDICTED 1

representative citing papers

Attention model for articulatory features detection

eess.AS · 2019-07-02 · unverdicted · novelty 5.0

Applies LAS model with a novel decoding technique for end-to-end articulatory feature detection alongside joint phone recognition in a multitask setup on limited data.

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  • Attention model for articulatory features detection eess.AS · 2019-07-02 · unverdicted · none · ref 3 · internal anchor

    Applies LAS model with a novel decoding technique for end-to-end articulatory feature detection alongside joint phone recognition in a multitask setup on limited data.