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Titlebook: Computational Models of Speech Pattern Processing; Keith Ponting Book 1999 Springer-Verlag Berlin Heidelberg 1999 Dialogue systems.Human s

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https://doi.org/10.1007/978-3-030-36592-9sed recognizer. This is achieved by using a phonetic classifier during the training phase. Three broad phonetic classes: voiced frames, unvoiced frames and transitions, are defined. We design speaker templates by the combination of four single state HMMs into a four state HMM after re-estimation of
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https://doi.org/10.1007/978-3-030-36592-9se models, which can be broadly classified as segment models, are surveyed in this chapter and presented in a general probabilistic framework that includes the hidden Markov model (HMM) as a special case. The overview gives options for modeling assumptions in terms of correlation structure and param
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Supercomputing Facilities for the 1990sisms of speech production than the typical mel-cepstrum representation. Initial developments are described towards using linear dynamic segmental HMMs [12] to model underlying (unobserved) trajectories of features which closely reflect the nature of articulation. So far, this work has involved calcu
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Computational Models of Speech Pattern Processing978-3-642-60087-6Series ISSN 0258-1248
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Fujitsu VP2000 Series Supercomputer,ecognizer performance. Recently, the . (DFE) method has been applied for estimating transformations of the representation space for speech recognizers. In this work, a variant of the DFE method is applied in order to improve the representation space for Continuous Speech Recognition.
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https://doi.org/10.1007/978-1-4684-5021-7ions. These technologies are reviewed from the viewpoint of a stochastic pattern matching paradigm for speech recognition. Improved robustness enables better speech recognition over a wide range of unexpected and adverse conditions by reducing mismatches between training and testing speech utterances.
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