Authors
Mehryar Mohri, Fernando Pereira, Michael Riley
Publication date
2008
Journal
Springer Handbook of Speech Processing
Pages
559-584
Publisher
Springer Berlin Heidelberg
Description
This chapter describes a general representation and algorithmic framework for speech recognition based on weighted finite-state transducers. These transducers provide a common and natural representation for major components of speech recognition systems, including hidden Markov models (HMMs), context-dependency models, pronunciation dictionaries, statistical grammars, and word or phone lattices. General algorithms for building and optimizing transducer models are presented, including composition for combining models, weighted determinization and minimization for optimizing time and space requirements, and a weight pushing algorithm for redistributing transition weights optimally for speech recognition. The application of these methods to large-vocabulary recognition tasks is explained in detail, and experimental results are given, in …
Total citations
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Scholar articles
M Mohri, F Pereira, M Riley - Springer Handbook of Speech Processing, 2008