MIN 모듈을 갖는 준연속 Hidden Markov Model

Semi-Continuous Hidden Markov Model with the MIN Module

  • 김대극 (한림정보산업대학 전자통신과) ;
  • 이정주 (강원대학교 전자공학과) ;
  • 정호균 (강원대학교 전자공학과) ;
  • 이상희 (강원대학교 전자공학과)
  • 발행 : 2000.12.01

초록

In this paper, we propose the HMM with the MIN module. Because initial and re-estimated variance vectors are important elements for performance in HMM recognition systems, we propose a method which compensates for the mismatched statistical feature of training and test data. The MIN module function is a differentiable function similar to the sigmoid function. Unlike a continuous density function, it does not include variance vectors of the data set. The proposed hybrid HMM/MIN module is a unified network in which the observation probability in the HMM is replaced by the MIN module neural network. The parameters in the unified network are re-estimated by the gradient descent method for the Maximum Likelihood (ML) criterion. In estimating parameters, the variance vector is not estimated because there is no variance element in the MIN module function. The experiment was performed to compare the performance of the proposed HMM and the conventional HMM. The experiment measured an isolated number for speaker independent recognition.

키워드