
doi: 10.1121/1.385826
pmid: 7240574
Speech is modeled as a Markov chain. Scoring is developed to convert observations of the speech signal into estimated probabilities of the locations of segment boundaries. Dynamic programming is then used to compute a most-probable segmentation for the speech. The process automatically adjusts to speakers and incorporates a priori information in a probabilistic and systematic fashion. The performance of the algorithm appears to be state-of-the-art, independent of speaker.
Computers, Phonetics, Methods, Speech Perception, Humans, Models, Psychological, Markov Chains, Probability
Computers, Phonetics, Methods, Speech Perception, Humans, Models, Psychological, Markov Chains, Probability
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