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Pronunciation variation across different dialects for English: A syllable-centric approach

机译:英语不同方言的发音差异:以音节为中心的方法

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Automatic Speech Recognition (ASR) systems account for wide variability in the acoustic signal through large amounts of training data. From a linguistic point of view, the acoustic variability is a consequence of pronunciation variation. It is apparent that neither (i) any two speakers utter the same words exactly the same way nor (ii) an individual can repeat the same words with acoustic identity. Hence ASR systems usually rely on multiple-pronunciation lexicons to match an acoustic sequence with a lexical unit. In this study, we have adopted a data-driven approach to generate pronunciation variants at syllable level. Group-Delay (GD) segmentation algorithm is used to acquire acoustic cue about syllable boundaries, which are validated by a vowel-onset point (VOP) detection algorithm. Manual transcriptions of GD syllable segments are done to produce new pronunciation variants. Results on the TIMIT database show that some pronunciations are exclusive for a particular dialect.
机译:自动语音识别(ASR)系统通过大量的训练数据解决了声学信号的广泛变化。从语言学的角度来看,声学可变性是发音变化的结果。显而易见的是,(i)任何两个说话者都不会以完全相同的方式发出相同的单词,或者(ii)任何人都无法以声学身份重复相同的单词。因此,ASR系统通常依赖于多发音词典来将声学序列与词汇单元相匹配。在这项研究中,我们采用了一种数据驱动的方法来生成音节级别的发音变体。组延迟(GD)分割算法用于获取有关音节边界的声音提示,并通过元音起始点(VOP)检测算法对其进行验证。手动完成GD音节段的转录,以产生新的发音变体。 TIMIT数据库上的结果表明,某些发音是特定方言所独有的。

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