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Bayesian adaptation of speech recognizers to field speech data

机译:贝叶斯的语音识别员对现场语音数据的适应

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The article studies a Bayesian (or Maximum A Posteriori MAP) approach to the adaptation of continuous density hidden Markov models (CDHMMs) to a specific condition of a speech recognition application. In order to improve the model robustness, CDHMMs formerly trained from laboratory data are then adapted using context dependent field utterances. Two specific problems have to be faced when using the MAP approach: the estimation of the a priori distribution parameters and the lack of field adaptation data for some distributions of the CDHMM. To estimate the a priori distribution parameters, we need to identify different realizations of the model parameters. Three different solutions are proposed and evaluated. To overcome the lack of adaptation data, field acoustical training frames may be shared among similar distributions. This is performed using an acoustical tree, obtained by progressively clustering the model distributions. Recognition results show that MAP adapted models significantly outperform those trained by maximum likelihood (ML), specifically when the field data set is small.
机译:本文研究了贝叶斯(或最大后验地图)方法,以使连续密度隐马尔可夫模型(CDHMMS)的适应改编为语音识别应用的特定条件。为了改善模型稳健性,然后使用实验数据培训的CDHMMS使用上下文相关的场话语来调整。使用地图方法时必须面临两个特定问题:估计先验分布参数以及用于CDHMM的某些分布的现场适应数据。要估计先验的分发参数,我们需要识别模型参数的不同实现。提出并评估了三种不同的解决方案。为了克服缺乏适应数据,可以在类似的分布之间共享现场声学训练帧。这是使用通过逐步聚类模型分布而获得的声学树进行的。识别结果表明,地图适应模型明显优于最大似然(ML)训练的模型,特别是当场数据集很小时。

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