음성인식을 위한 변환 공간 모델에 근거한 순차 적응기법

Sequential Adaptation Algorithm Based on Transformation Space Model for Speech Recognition

  • 김동국 (전남대학교 전자컴퓨터정보통신 공학부) ;
  • 장준혁 (캘리포니아 주립대학, 산타바바라) ;
  • 김남수 (서울대학교 전기컴퓨터 공학부)
  • 발행 : 2004.12.01

초록

In this paper, we propose a new approach to sequential linear regression adaptation of continuous density hidden Markov models (CDHMMs) based on transformation space model (TSM). The proposed TSM which characterizes the a priori knowledge of the training speakers associated with maximum likelihood linear regression (MLLR) matrix parameters is effectively described in terms of the latent variable models. The TSM provides various sources of information such as the correlation information, the prior distribution, and the prior knowledge of the regression parameters that are very useful for rapid adaptation. The quasi-Bayes (QB) estimation algorithm is formulated to incrementally update the hyperparameters of the TSM and regression matrices simultaneously. Experimental results showed that the proposed TSM approach is better than that of the conventional quasi-Bayes linear regression (QBLR) algorithm for a small amount of adaptation data.

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