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Using Articulatory Representations to Detect Segmental Errors in Nonnative Pronunciation

机译:使用发音表达来检测非母语发音中的节段错误

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摘要

Motivated by potential applications in second-language pedagogy, we present a novel approach to using articulatory information to improve automatic detection of typical phone-level errors made by nonnative speakers of English—a difficult task that involves discrimination between close pronunciations. We describe a reformulation of the hidden-articulator Markov model (HAMM) framework that is appropriate for the pronunciation evaluation domain. Model training requires no direct articulatory measurement, but rather involves a constrained and interpolated mapping from phone-level transcriptions to a set of physically and numerically meaningful articulatory representations. Here, we define two new methods of deriving articulatory-based features for classification: one, by concatenating articulatory recognition results over eight streams representative of the vocal tract''''s constituents; the other, by calculating multidimensional articulatory confidence scores within these representations based on general linguistic knowledge of articulatory variants. After adding these articulatory features to traditional phone-level confidence scores, our results demonstrate absolute reductions in combined error rates for verification of segment-level pronunciations produced by nonnative speakers in the ISLE corpus by as much as 16%–17% for some target segments, and a 3%–4% absolute improvement overall.
机译:受第二语言教学中潜在应用的启发,我们提出了一种新颖的方法,利用发音信息来改进对英语非英语使用者常见的电话级错误的自动检测,这是一项艰巨的任务,涉及到区分近发音。我们描述了适用于语音评估领域的隐藏发音器马尔可夫模型(HAMM)框架的重新表述。模型训练不需要直接的发音测量,而是涉及从电话级转录到一组物理上和数字上有意义的发音表示的受限和内插映射。在这里,我们定义了两种基于发音的特征进行分类的新方法:一种是通过将代表声道成分的八种流的发音识别结果进行级联;另一种方法是,根据发音变体的一般语言知识,通过在这些表示形式内计算多维发音置信度得分。在将这些发音特征添加到传统电话级别的置信度分数之后,我们的结果表明,对于某些目标细分,用于验证ISLE语料库中的非母语用户所产生的细分级别发音的组合错误率绝对降低了16%–17% ,总体上可以提高3%–4%。

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