Codebook design for subspace distribution clustering hidden Markov model

Subspace distribution clustering hidden Markov model을 위한 codebook design

  • Cho, Young-Kyu (Speech Information Processing Lab., Department of Computer Science and Engineering, Korea Univ.) ;
  • Yook, Dong-Suk (Speech Information Processing Lab., Department of Computer Science and Engineering, Korea Univ.)
  • 조영규 (고려대학교 컴퓨터학과 음성정보처리 연구실) ;
  • 육동석 (고려대학교 컴퓨터학과 음성정보처리 연구실)
  • Published : 2005.04.27

Abstract

Today's state-of the-art speech recognition systems typically use continuous distribution hidden Markov models with the mixtures of Gaussian distributions. To obtain higher recognition accuracy, the hidden Markov models typically require huge number of Gaussian distributions. Such speech recognition systems have problems that they require too much memory to run, and are too slow for large applications. Many approaches are proposed for the design of compact acoustic models. One of those models is subspace distribution clustering hidden Markov model. Subspace distribution clustering hidden Markov model can represent original full-space distributions as some combinations of a small number of subspace distribution codebooks. Therefore, how to make the codebook is an important issue in this approach. In this paper, we report some experimental results on various quantization methods to make more accurate models.

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