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Automatic Pronunciation Error Detection Based on Extended Pronunciation Space Using the Unsupervised Clustering of Pronunciation Errors

机译:基于语音错误无监督聚类的扩展语音空间自动语音错误检测

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Calculating posterior probability within a standard pronunciation space (SPS) is a common method in automatic pronunciation error detection (APED). However, to pronunciation errors outside the SPS, this kind of methods can only give an approximate solution, that may be not right in many applications. This paper expands the SPS to include more pronunciation errors, introduces a Bhattacharyya distance based clustering of pronunciation errors, and thus refines more detailed acoustic models for APED within the extended pronunciation space (EPS). The relationship between the performance of APED system and the number of cluster or the size of the EPS is well studied. The experimental results show that, compared with the APED based on the SPS, the APED based on the EPS using adaptive unsupervised clustering of pronunciation errors can achieve a better performance and the average scoring error rate (ASER) decreases from 0.412 to 0.301, relatively reducing by 26.94%.
机译:在标准发音空间(SPS)中计算后验概率是自动发音错误检测(APED)的常用方法。但是,对于SPS之外的发音错误,这种方法只能给出一个近似的解决方案,这在许多应用程序中可能不正确。本文将SPS扩展为包括更多的发音错误,引入了基于巴氏距离的发音错误聚类,从而在扩展的发音空间(EPS)中完善了APED的更详细的声学模型。对APED系统性能与簇数或EPS大小之间的关系进行了很好的研究。实验结果表明,与基于SPS的APED相比,基于EPS的APED使用语音错误的自适应无监督聚类可以实现更好的性能,平均评分错误率(ASER)从0.412降低至0.301,相对降低了增长了26.94%。

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