Study on solitary word based on HMM modeland Baum-Welch algorithm
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    Abstract:

    This paper introduces the principle of Hidden Markov Model, which is used to describe the Markov process with unknown parameters, is a probability model to describe the statistical properties of the random process. On this basis, designed a solitary word detection experiment based on HMM model, by optimizing the experimental model, Using Baum-Welch algorithm for training the problem of solving the HMM model, HMM model to estimate the parameters of the λ value is found, in this view of mathematics equivalent to other linear prediction coefficient. This experiment in reducing unnecessary HMM training at the same time, reduced the algorithm complexity. In order to test the effectiveness of the Baum-Welch algorithm, The simulation of experimental data, the results show that the algorithm is effective.

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CHEN Junxia, LIU Ziyu. Study on solitary word based on HMM modeland Baum-Welch algorithm[J]. Journal of Hebei University of Science and Technology,2015,36(1):52-57

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History
  • Received:September 12,2014
  • Revised:October 28,2014
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  • Online: January 22,2015
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