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TASLP
2008

Using Articulatory Representations to Detect Segmental Errors in Nonnative Pronunciation

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Using Articulatory Representations to Detect Segmental Errors in Nonnative Pronunciation
Abstract--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 rep...
Joseph Tepperman, Shrikanth Narayanan
Added 15 Dec 2010
Updated 15 Dec 2010
Type Journal
Year 2008
Where TASLP
Authors Joseph Tepperman, Shrikanth Narayanan
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