Improved Strategies For A Zero Oov Rate Lvcsr System

2015 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP)(2015)

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摘要
In this work, multiple hierarchical language modeling strategies for a zero OOV rate large vocabulary continuous speech recognition system are investigated. In our previously proposed hierarchical approach, a full-word language model and a context independent character-level LM (CLM) are directly used during search. The novelty of this work is to jointly model the character-level prior and the pronunciation probabilities, to introduce across-word context into the character-level LM, and to properly normalize the character-level LM using prefix-tree based normalization for the hierarchical approach. Significant reductions in-terms of word error rates (WER) on the best full-word Quaero Polish LVCSR system are reported.
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关键词
OOV,hierarchical,prefix-tree,LVCSR
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