The Romanian speech synthesis (RSS) corpus: Building a high quality HMM-based speech synthesis system using a high sampling rate

Adriana Stan, Junichi Yamagishi, Simon King, Matthew Aylett

Research output: Contribution to journalArticlepeer-review

65 Citations (Scopus)

Abstract

This paper first introduces a newly-recorded high quality Romanian speech corpus designed for speech synthesis, called “RSS”, along with Romanian front-end text processing modules and HMM-based synthetic voices built from the corpus. All of these are now freely available for academic use in order to promote Romanian speech technology research. The RSS corpus comprises 3500 training sentences and 500 test sentences uttered by a female speaker and was recorded using multiple microphones at 96 kHz sampling frequency in a hemianechoic chamber. The details of the new Romanian text processor we have developed are also given.

Using the database, we then revisit some basic configuration choices of speech synthesis, such as waveform sampling frequency and auditory frequency warping scale, with the aim of improving speaker similarity, which is an acknowledged weakness of current HMM-based speech synthesisers. As we demonstrate using perceptual tests, these configuration choices can make substantial differences to the quality of the synthetic speech. Contrary to common practice in automatic speech recognition, higher waveform sampling frequencies can offer enhanced feature extraction and improved speaker similarity for HMM-based speech synthesis.
Original languageEnglish
Pages (from-to)442-450
Number of pages9
JournalSpeech Communication
Volume53
Issue number3
DOIs
Publication statusPublished - Mar 2011

Keywords

  • Speech synthesis
  • HTS
  • Romanian
  • HMMs
  • Sampling frequency
  • Auditory scale

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