Model-based articulatory phonetic features for improved speech recognition

IJCNN(2012)

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摘要
We describe a neural based articulatory phonetic inversion model to improve the recognition of the acoustically varying vowels and the syllable initial plosives. The model uses a set of continuous valued articulatory phonetic features (APFs) to explore the interactions between the motor control of articulators and the acoustic phonetic events. We demonstrate that the neural model gives more accurate and robust recognition performance on the TIMIT sentences. The model offers two salient properties: it allows asynchronous feature changes at phoneme boundaries, and it accounts for the dual aspects of human speech production and perception through a heuristic learning algorithm during APFs mapping.
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关键词
acoustically varying vowels,human speech production,timit sentences,speech recognition,neural based articulatory phonetic inversion model,asynchronous feature changes,learning (artificial intelligence),motor control,syllable initial plosives,heuristic learning algorithm,model-based articulatory phonetic features,apf mapping,phoneme boundaries,neural nets,learning artificial intelligence,speech,hidden markov models,production
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