Partly hidden Markov model and its application to speech recognition

نویسندگان

  • Tetsunori Kobayashi
  • Junko Furuyama
  • Ken Masumitsu
چکیده

A new pattern matching method, Partly Hidden Markov Model, is proposed and applied to speech recognition. Hidden Markov Model, which is widely used for speech recognition, can deal with only piecewise stationary stochastic process. We solved this problem by introducing the modi ed second order Markov Model, in which the rst state is hidden and the second one is observable. In this model, not only the feature parameter observations but also the state transitions are dependent on the previous feature observation. Therefore, even the compricated transient can be modeled precisely. Some simulational experiments showed the high potential of the proposed model. As the results of word recognition test, the error rate was reduced by 39% compared with normal HMM.

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تاریخ انتشار 1999