Title :
Retrieving Tract Variables From Acoustics: A Comparison of Different Machine Learning Strategies
Author :
Mitra, Vikramjit ; Nam, Hosung ; Espy-Wilson, Carol Y. ; Saltzman, Elliot ; Goldstein, Louis
Author_Institution :
Dept. of Electr. & Comput. Enginering, Univ. of Maryland, College Park, MD, USA
Abstract :
Many different studies have claimed that articulatory information can be used to improve the performance of automatic speech recognition systems. Unfortunately, such articulatory information is not readily available in typical speaker-listener situations. Consequently, such information has to be estimated from the acoustic signal in a process which is usually termed “speech-inversion.” This study aims to propose and compare various machine learning strategies for speech inversion: Trajectory mixture density networks (TMDNs), feedforward artificial neural networks (FF-ANN), support vector regression (SVR), autoregressive artificial neural network (AR-ANN), and distal supervised learning (DSL). Further, using a database generated by the Haskins Laboratories speech production model, we test the claim that information regarding constrictions produced by the distinct organs of the vocal tract (vocal tract variables) is superior to flesh-point information (articulatory pellet trajectories) for the inversion process.
Keywords :
acoustic signal processing; feedforward neural nets; learning (artificial intelligence); regression analysis; speaker recognition; support vector machines; AR-ANN; DSL; FF-ANN; Haskins Laboratories speech production model; SVR; TMDN; acoustic signal; articulatory information; articulatory pellet trajectory; automatic speech recognition systems; autoregressive artificial neural network; distal supervised learning; feedforward artificial neural networks; flesh-point information; machine learning strategy; speaker-listener situations; speech-inversion; support vector regression; trajectory mixture density networks; vocal tract variables; Artificial neural networks; Machine learning; Speech; Speech recognition; Supervised learning; Tongue; Articulatory phonology; articulatory speech recognition (ASR); artificial neural networks (ANNs); coarticulation; distal supervised learning; mixture density networks; speech inversion; task dynamic and applications model; vocal-tract variables;
Journal_Title :
Selected Topics in Signal Processing, IEEE Journal of
DOI :
10.1109/JSTSP.2010.2076013