Title :
Continuous speech recognition using hidden Markov models
Author_Institution :
Texas Univ., Dallas, TX, USA
fDate :
7/1/1990 12:00:00 AM
Abstract :
The use of hidden Markov models (HMMs) in continuous speech recognition is reviewed. Markov models are presented as a generalization of their predecessor technology, dynamic programming. A unified view is offered in which both linguistic decoding and acoustic matching are integrated into a single, optimal network search framework. Advances in recognition architectures are discussed. The fundamentals of Viterbi beam search, the dominant search algorithm used today in speed recognition, are presented. Approaches to estimating the probabilities associated with an HMM model are examined. The HMM-supervised training paradigm is examined. Several examples of successful HMM-based speech recognition systems are reviewed.<>
Keywords :
Markov processes; reviews; speech recognition; HMM-supervised training paradigm; Viterbi beam search; acoustic matching; continuous speech recognition; hidden Markov models; linguistic decoding; optimal network search framework; recognition architectures; Acoustic applications; Acoustic signal processing; Decoding; Dynamic programming; Hidden Markov models; Mathematical model; Natural languages; Signal processing; Speech processing; Speech recognition;
Journal_Title :
ASSP Magazine, IEEE