首页> 外文会议>International Conference on Spoken Language Processing; 20041004-08; Jeju(KR) >Acoustic model adaptation based on coarse/fine training of transfer vectors and its application to a speaker adaptation task
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Acoustic model adaptation based on coarse/fine training of transfer vectors and its application to a speaker adaptation task

机译:基于传递矢量粗/细训练的声学模型自适应及其在说话人自适应任务中的应用

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摘要

In this paper, we propose a novel adaptation technique based on coarse/fine training of transfer vectors. We focus on transfer vector estimation of a Gaussian mean from an initial model to an adapted model. The transfer vector is decomposed into a direction vector and a scaling factor. By using tied-Gaussian class (coarse class) estimation for the direction vector, and by using individual Gaussian class (fine class) estimation for the scaling factor, we can obtain accurate transfer vectors with a small number of parameters. Simple training algorithms for transfer vector estimation are analytically derived using the variational Bayes, maximum a posteriori (MAP) and maximum likelihood methods. Speaker adaptation experiments show that our proposals clearly improve speech recognition performance for any amount of adaptation data, compared with conventional MAP adaptation.
机译:在本文中,我们提出了一种基于传递向量的粗/细训练的新型自适应技术。我们专注于从初始模型到适应模型的高斯均值传递向量估计。传递向量被分解为方向向量和比例因子。通过对方向矢量使用平顶高斯分类(粗分类)估计,对比例因子使用单独的高斯分类(细分类)估计,我们可以获得带有少量参数的精确传递矢量。使用变分贝叶斯,最大后验(MAP)和最大似然方法来分析得出用于传递矢量估计的简单训练算法。说话人自适应实验表明,与传统的MAP自适应相比,我们的建议明显改善了任意数量的自适应数据的语音识别性能。

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