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Speaker Adaptation of Quantized Parameter HMMs

机译:量化参数HMM的说话人适应

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摘要

This paper extends the evaluation of Hidden Markov Models with quantized parameters (qHMM) presented in [5] to the case of speaker adaptive training. In speaker-independent speech recognition tasks, qHMMs were found to provide a similar performance as the original continuous density HMMs (CDHMM) with substantially reduced memory requirements. In this paper, we propose a Bayesian type of adaptation framework for qHMMs to improve the speaker-specific acoustic modeling accuracy. Experimental results indicate that the proposed qHMM adaptation scheme provides a comparable performance as obtained with the Bayesian adaptation of CDHMMs in a noise-free test environment. In the presence of noise, on the other hand, the performance improvement due to qHMM adaptation is lower than obtained in the CDHMM case. In general, the adaptation gains are on a similar scale fact that confers to qHMMs a great practical value.
机译:本文将[5]中提出的带有量化参数(qHMM)的隐马尔可夫模型的评估扩展到说话人自适应训练的情况。在独立于说话者的语音识别任务中,发现qHMM具有与原始连续密度HMM(CDHMM)类似的性能,并且显着减少了内存需求。在本文中,我们为qHMM提出了一种贝叶斯类型的自适应框架,以提高特定于说话者的声学建模精度。实验结果表明,提出的qHMM自适应方案在无噪声的测试环境中提供了与CDHMM的贝叶斯自适应所获得的性能相当的性能。另一方面,在存在噪声的情况下,由于qHMM自适应而导致的性能改进低于CDHMM情况下的性能改进。通常,适应增益具有类似的规模,这赋予qHMM很大的实用价值。

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