Acoustic modeling based on model structure annealing for speech recognition

This paper proposes an HMM training technique using multiple phonetic decision trees and evaluates it in speech recognition. In the use of context dependent models, the decision tree based context clustering is applied to find a parameter tying structure. However, the clustering is usually performed based on statistics of HMM state sequences which are obtained by unreliable models without context clustering. To avoid this problem, we optimize the decision trees and HMM state sequences simultaneously. In the proposed method, this is performed by maximum likelihood (ML) estimation of a newly defined statistical model which includes multiple decision trees as hidden variables. Applying the deterministic annealing expectation maximization (DAEM) algorithm and using multiple decision trees in early stage of model training, state sequences are reliably estimated. In continuous phoneme recognition experiments, the proposed method can improve the recognition performance.

[1]  Koichi Shinoda,et al.  Acoustic modeling based on the MDL principle for speech recognition , 1997, EUROSPEECH.

[2]  Naonori Ueda,et al.  Deterministic annealing EM algorithm , 1998, Neural Networks.

[3]  Michael I. Jordan,et al.  An Introduction to Variational Methods for Graphical Models , 1999, Machine-mediated learning.

[4]  Keiichi Tokuda,et al.  An adaptive algorithm for mel-cepstral analysis of speech , 1992, [Proceedings] ICASSP-92: 1992 IEEE International Conference on Acoustics, Speech, and Signal Processing.

[5]  Jj Odell,et al.  The Use of Context in Large Vocabulary Speech Recognition , 1995 .

[6]  Heiga Zen,et al.  Deterministic annealing EM algorithm in parameter estimation for acoustic model , 2004, INTERSPEECH.