Adapting grapheme-to-phoneme conversion for name recognition

ASRU(2007)

引用 26|浏览24
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摘要
This work investigates the use of acoustic data to improve grapheme-to-phoneme conversion for name recognition. We introduce a joint model of acoustics and graphonemes, and present two approaches, maximum likelihood training and discriminative training, in adapting graphoneme model parameters. Experiments on a large-scale voice-dialing system show that the maximum likelihood approach yields a relative 7% reduction in SER compared to the best baseline result we obtained without leveraging acoustic data, while discriminative training enlarges the SER reduction to 12%.
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关键词
grapheme-to-phoneme conversion,maximum likelihood training,name recognition,large-scale voice-dialing system,speech recognition,maximum likelihood estimation,character recognition,index terms— grapheme-to-phoneme conversion,discriminative training,pro- nunciation model,pronunciation model,audio signal processing,maximum likelihood
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