自动语音识别中的非母语口音发音建模

Basem H. A. Ahmed, T. Tan
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引用次数: 6

摘要

本文提出了一种用于语音自动识别系统的非母语重音语音建模方法。该方法包括两个阶段:语音适应和语音泛化。在电话适应中,我们将非母语人士使用的电话与标准电话进行比较,然后消除由于母语影响而产生的不匹配。在发音适应中,我们预测非母语人士的发音。结果表明,该方法可将WER从44.8%降低到41.9%。
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Non-native Accent Pronunciation Modeling in Automatic Speech Recognition
In this paper, we proposed an approach to model the pronunciation of non-native accented speech for automatic speech recognition system. The proposed method consists of two phases: phones adaptation and pronunciation generalization. In phones adaptation, we identify the phones used by non-native speakers compared to the standard phones, and then remove the mismatch, as a result of the influence from mother tongue. In pronunciation adaptation, we predict the pronunciations of words by non-native speakers. The results shown the proposed approach reduce the WER from 44.8% to 41.9%.
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