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 [BibTeX] [Marc21]
ACCENT ADAPTATION USING SUBSPACE GAUSSIAN MIXTURE MODELS
Type of publication: Idiap-RR
Citation: Motlicek_Idiap-RR-38-2013
Number: Idiap-RR-38-2013
Year: 2013
Month: 11
Institution: Idiap
Address: Rue Marconi 19, Martigny, Switzerland
Abstract: This paper investigates employment of Subspace Gaussian Mixture Models (SGMMs) for acoustic model adaptation towards different accents for English speech recognition. The SGMMs comprise globally-shared and state-specific parameters which can efficiently be employed for various kinds of acoustic parameter tying. Research results indicate that well-defined sharing of acoustic model parameters in SGMMs can significantly outperform adapted systems based on conventional HMM/GMMs. Furthermore, SGMMs rapidly achieve target acoustic models with small amounts of data. Experiments performed with US and UK English versions of the Wall Street Journal (WSJ) corpora indicate that SGMMs lead to approximately 20% and 8% relative improvements with respect to speaker-independent and speaker-adapted acoustic models respectively over conventional HMM/GMMs. Finally, we demonstrate that SGMMs adapted only with 1.5 hours can reach performance of HMM/GMMs trained with 18 hours.
Keywords: Accented speech, Acoustic model adaptation, Automatic Speech Recognition, Under-resourced data
Projects Idiap
SAMSUNG
Authors Motlicek, Petr
Garner, Philip N.
Kim, Namhoon
Cho, Jeongmi
Crossref by Motlicek_ICASSP2013-2_2013
Added by: [ADM]
Total mark: 0
Attachments
  • Motlicek_Idiap-RR-38-2013.pdf (MD5: 30b5641c42b9d5b24c70565f3f12acde)
Notes