Rapid online adaptation based on transformation space model evolution

Dong Kook Kim, N. Kim
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引用次数: 5

Abstract

This paper presents a new approach to online linear regression adaptation of continuous density hidden Markov models based on transformation space model (TSM) evolution. The TSM which characterizes the a priori knowledge of the training speakers associated with maximum likelihood linear regression matrix parameters is effectively described in terms of the latent variable models such as the factor analysis or probabilistic principal component analysis. The TSM provides various sources of information such as the correlation information, the prior distribution, and the prior knowledge of the regression parameters that are very useful for rapid adaptation. The quasi-Bayes estimation algorithm is formulated to incrementally update the hyperparameters of the TSM and regression matrices simultaneously. The proposed TSM evolution is a general framework with batch TSM adaptation as a special case. Experiments on supervised speaker adaptation demonstrate that the proposed approach is more effective compared with the conventional quasi-Bayes linear regression technique when a small amount of adaptation data is available.
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基于变换空间模型演化的快速在线自适应
提出了一种基于变换空间模型(TSM)演化的连续密度隐马尔可夫模型在线线性回归自适应方法。TSM通过因子分析或概率主成分分析等潜在变量模型有效地描述了训练讲者与最大似然线性回归矩阵参数相关的先验知识。TSM提供各种信息源,例如相关性信息、先验分布和回归参数的先验知识,这些对快速适应非常有用。拟贝叶斯估计算法用于同时增量更新TSM和回归矩阵的超参数。本文提出的TSM演进是一个通用框架,而批量TSM适应是一个特例。有监督说话人自适应实验表明,当自适应数据较少时,该方法比传统的准贝叶斯线性回归方法更有效。
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