RETRACTED ARTICLE: Research on the distal supervised learning model with tract variables

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[9]  Elliot Saltzman,et al.  Retrieving Tract Variables From Acoustics: A Comparison of Different Machine Learning Strategies , 2010, IEEE Journal of Selected Topics in Signal Processing.

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[11]  Elliot Saltzman,et al.  Noise robustness of tract variables and their application to speech recognition , 2009, INTERSPEECH.

[12]  C. Espy-Wilson,et al.  A step in the realization of a speech recognition system based on gestural phonology and landmarks. , 2009 .