Neural Modeling of Speech Processing and Speech Learning

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  • Neural Modeling of Speech Processing and Speech Learning Book Detail

  • Author : Bernd J. Kröger
  • Release Date : 2019-07-11
  • Publisher : Springer
  • Genre : Medical
  • Pages : 282
  • ISBN 13 : 3030158535
  • File Size : 91,91 MB

Neural Modeling of Speech Processing and Speech Learning by Bernd J. Kröger PDF Summary

Book Description: This book explores the processes of spoken language production and perception from a neurobiological perspective. After presenting the basics of speech processing and speech acquisition, a neurobiologically-inspired and computer-implemented neural model is described, which simulates the neural processes of speech processing and speech acquisition. This book is an introduction to the field and aimed at students and scientists in neuroscience, computer science, medicine, psychology and linguistics.

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