Van Hai Do, Xiong Xiao, Chng Eng Siong, Haizhou Li
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引用次数: 10
摘要
本文提出了一种基于有限训练数据的声学建模新方法。这个想法是利用训练有素的源语言声学模型。本文采用传统的源语言HMM/GMM三音器声学模型,对目标语言的每个特征向量进行似然评分。然后用神经网络将这些分数映射到目标语言的三音。我们进行了一个案例研究,其中马来语是源语言,而英语(Aurora-4任务)是目标语言。在Aurora-4 (clean test set)上的实验结果表明,仅使用7分钟、16分钟和55分钟的英语训练数据,我们的单词错误率分别达到21.58%、17.97%和12.93%。这些结果明显优于传统的HMM/GMM和混合系统。
Context dependant phone mapping for cross-lingual acoustic modeling
This paper presents a novel method for acoustic modeling with limited training data. The idea is to leverage on a well-trained acoustic model of a source language. In this paper, a conventional HMM/GMM triphone acoustic model of the source language is used to derive likelihood scores for each feature vector of the target language. These scores are then mapped to triphones of the target language using neural networks. We conduct a case study where Malay is the source language while English (Aurora-4 task) is the target language. Experimental results on the Aurora-4 (clean test set) show that by using only 7, 16, and 55 minutes of English training data, we achieve 21.58%, 17.97%, and 12.93% word error rate, respectively. These results outperform the conventional HMM/GMM and hybrid systems significantly.