首页> 外文会议>Annual conference of the International Speech Communication Association;INTERSPEECH 2011 >Matrix- Variate Distribution of Training Models for Robust Speaker Adaptation
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Matrix- Variate Distribution of Training Models for Robust Speaker Adaptation

机译:健壮说话人适应性的训练模型的矩阵-变量分布

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In this paper, we describe a new speaker adaptation method based on the matrix-variate distribution of training models. A set of mean vectors of hidden Markov models (HMMs) is assumed to be drawn from the matrix-variate normal distribution, and bases are derived under this assumption. The resulting bases have the same dimension as that of the eigenvoice, thus adaptation can be performed using the same equation. In the isolated-word experiments, the proposed method showed a comparable performance with the eigenvoice in a clean environment, and showed better performance than the eigenvoice in both babble and factory floor noises. The experimental results demonstrated the validity of the matrix-variate normal assumption about the training models, thus the proposed method can be used for rapid speaker adaptation in noise environments.
机译:在本文中,我们基于训练模型的矩阵变量分布描述了一种新的说话人自适应方法。假定从矩阵变量正态分布中得出一组隐马尔可夫模型(HMM)的均值向量,并在此假设下得出基数。所得的基数与本征语音的维数相同,因此可以使用相同的方程式进行自适应。在孤立词实验中,所提出的方法在干净的环境中表现出与本征语音相当的性能,并且在杂音和工厂车间噪声方面均表现出比本征语音更好的性能。实验结果证明了训练模型的矩阵变量正态假设的有效性,因此该方法可用于噪声环境下的快速说话人自适应。

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