Minimum Bayes Risk Estimation and Decoding in Large Vocabulary Continuous Speech Recognition

William Byrne, William

IEICE Transactions(2006)

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摘要
Minimum Bayes risk estimation and decoding strategies based on lattice segmentation techniques can be used to refine large vocabulary continuous speech recognition systems through the estimation of the parameters of the underlying hidden Markov models and through the identification of smaller recognition tasks which provides the opportunity to incorporate novel modeling and decoding procedures in LVCSR. These techniques are discussed in the context of going 'beyond HMMs', showing in particular that this process of subproblem identification makes it possible to train and apply small-domain binary pattern classifiers, such as Support Vector Machines, to large vocabulary continuous speech recognition.
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关键词
subproblem identification,support vector machines,minimum bayes risk estimation,decoding strategy,lattice segmentation technique,large vocabulary continuous speech,pattern classifiers,to large vo- cabulary continuous speech recognition. key words:,recognition system,decoding procedure,novel modeling,such as support vector machines,smaller recognition task
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