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Measuring the gap between HMM-based ASR and TTS
Type of publication: Conference paper
Citation: Dines_INTERSPEECH_2009
Booktitle: Proceedings of Interspeech
Year: 2009
Month: 9
Location: Brighton, U.K.
Crossref: Dines_Idiap-RR-16-2009:
Abstract: The EMIME European project is conducting research in the development of technologies for mobile, personalised speech-tospeech translation systems. The hidden Markov model is being used as the underlying technology in both automatic speech recognition (ASR) and text-to-speech synthesis (TTS) components, thus, the investigation of unified statistical modelling approaches has become an implicit goal of our research. As one of the first steps towards this goal, we have been investigating commonalities and differences between HMM-based ASR and TTS. In this paper we present results and analysis of a series of experiments that have been conducted on English ASR and TTS systems measuring their performance with respect to phone set and lexicon, acoustic feature type and dimensionality andHMM topology. Our results show that, although the fundamental statistical model may be essentially the same, optimal ASR and TTS performance often demands diametrically opposed system designs. This represents a major challenge to be addressed in the investigation of such unified modelling approaches.
Keywords: speech recognition, speech synthesis, unified models
Projects EMIME
Authors Dines, John
Yamagishi, Junichi
King, Simon
Added by: [UNK]
Total mark: 0
Attachments
  • Dines_INTERSPEECH_2009.pdf
Notes