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Original Articles

Auditory sensitivity to formant ratios: Toward an account of vowel normalisation

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Pages 808-839 | Received 11 Jun 2009, Published online: 17 Jun 2010
 

Abstract

A long-standing question in speech perception research is how listeners extract linguistic content from a highly variable acoustic input. In the domain of vowel perception, formant ratios, or the calculation of relative bark differences between vowel formants, have been a sporadically proposed solution. We propose a novel formant ratio algorithm in which the first (F1) and second (F2) formants are compared against the third formant (F3). Results from two magnetoencephalographic experiments are presented that suggest auditory cortex is sensitive to formant ratios. Our findings also demonstrate that the perceptual system shows heightened sensitivity to formant ratios for tokens located in more crowded regions of the vowel space. Additionally, we present statistical evidence that this algorithm eliminates speaker-dependent variation based on age and gender from vowel productions. We conclude that these results present an impetus to reconsider formant ratios as a legitimate mechanistic component in the solution to the problem of speaker normalisation.

Acknowledgements

We would like to thank Jeffrey Walker for invaluable lab assistance and David Poeppel for useful suggestions in the preparation of this manuscript. This work was funded by NIH 7R01DC005660-07 to David Poeppel and William J. Idsardi.

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