Thesis: Nonlinear Compensation and Heterogeneous Data Modeling for Robust Speech Recognition. Thesis: Design and Implementation a Corpus-based Unit Selection Text-to-speech System. Robust Speech Recognition Using Distributed Transducer Networks. Investigated a Variety of Robust Speech

نویسندگان

  • ZHAO
  • YONG
چکیده

EDUCATION Georgia Institute of Technology Atlanta, GA Ph.D. candidate in Electrical and Computer Engineering 08/200712/2012 (expected) Thesis: Nonlinear Compensation and Heterogeneous Data Modeling for Robust Speech Recognition. Thesis adviser: Biing-Hwang (Fred) Juang Tsinghua University Beijing, China M.S. in Electronic Engineering 09/1998-07/2001 Thesis: Design and Implementation a Corpus-Based Unit Selection Text-to-Speech System. Tsinghua University Beijing, China B.S. in Electronic Engineering 09/1993-07/1998

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تاریخ انتشار 2012