从跨语言语音比较中得出显著的学习者发音错误

H. Meng, Y. Lo, Lan Wang, W. Lau
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引用次数: 82

摘要

本研究旨在找出中国(母语为广东话)英语学习者(第二语言为美式英语)的显著发音错误,以支持教学和补救指导的设计。我们的方法以语言迁移理论为基础,涉及两种语言之间的系统语音比较,以预测可能导致发音错误的语音混淆。我们收集了大约21位粤语英语学习者的语音录音。我们基于TIMIT语料库,通过训练交叉词三音模型,开发了一个自动语音识别器。我们还开发了一个“扩展”的发音词典,它包含了预测的语音混淆,从而为每个单词生成额外的、错误的发音变体。利用扩展语音词典对粤语学习者的英语语音录音进行识别,形成混淆网络。我们参考错误识别输出的统计数据来得出显著的错误发音,从而规定基于语音比较的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deriving salient learners’ mispronunciations from cross-language phonological comparisons
This work aims to derive salient mispronunciations made by Chinese (L1 being Cantonese) learners of English (L2 being American English) in order to support the design of pedagogical and remedial instructions. Our approach is grounded on the theory of language transfer and involves systematic phonological comparison between two languages to predict possible phonetic confusions that may lead to mispronunciations. We collect a corpus of speech recordings from some 21 Cantonese learners of English. We develop an automatic speech recognizer by training cross-word triphone models based on the TIMIT corpus. We also develop an "extended" pronunciation lexicon that incorporates the predicted phonetic confusions to generate additional, erroneous pronunciation variants for each word. The extended pronunciation lexicon is used to produce a confusion network in recognition of the English speech recordings of Cantonese learners. We refer to the statistics of the erroneous recognition outputs to derive salient mispronunciations that stipulates the predictions based on phonological comparison.
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