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Resumen de Incorporating prosody into neural speech processing pipelines

Hamdi Alp Öktem

  • In this dissertation, I study the inclusion of prosody into two applications that involve speech understanding: automatic speech transcription and spoken language translation. In the former case, I propose a method that uses an attention mechanism over parallel sequences of prosodic and morphosyntactic features. Results indicate an F1 score of 70.3% in terms of overall punctuation generation accuracy. In the latter problem I deal with enhancing spoken language translation with prosody. A neural machine translation system trained with movie-domain data is adapted with pause features using a prosodically annotated bilingual dataset. Results show that prosodic punctuation generation as a preliminary step to translation increases translation accuracy by 1% in terms of BLEU scores. Encoding pauses as an extra encoding feature gives an additional 1% increase to this number. The system is further extended to jointly predict pause features in order to be used as an input to a text-to-speech system.


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