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Automatic Speech and Speaker Recognition: Large Margin and Kernel Methods
Contributor(s): Keshet, Joseph (Editor), Bengio, Samy (Editor)
ISBN: 0470696834     ISBN-13: 9780470696835
Publisher: Wiley
OUR PRICE:   $132.95  
Product Type: Hardcover - Other Formats
Published: March 2009
Qty:
Temporarily out of stock - Will ship within 2 to 5 weeks
Additional Information
BISAC Categories:
- Computers | Natural Language Processing
Dewey: 006.454
LCCN: 2008038551
Physical Information: 0.8" H x 6.8" W x 9.8" (1.30 lbs) 268 pages
 
Descriptions, Reviews, Etc.
Publisher Description:
This book discusses large margin and kernel methods for speech and speaker recognition

Speech and Speaker Recognition: Large Margin and Kernel Methods is a collation of research in the recent advances in large margin and kernel methods, as applied to the field of speech and speaker recognition. It presents theoretical and practical foundations of these methods, from support vector machines to large margin methods for structured learning. It also provides examples of large margin based acoustic modelling for continuous speech recognizers, where the grounds for practical large margin sequence learning are set. Large margin methods for discriminative language modelling and text independent speaker verification are also addressed in this book.

Key Features:

  • Provides an up-to-date snapshot of the current state of research in this field
  • Covers important aspects of extending the binary support vector machine to speech and speaker recognition applications
  • Discusses large margin and kernel method algorithms for sequence prediction required for acoustic modeling
  • Reviews past and present work on discriminative training of language models, and describes different large margin algorithms for the application of part-of-speech tagging
  • Surveys recent work on the use of kernel approaches to text-independent speaker verification, and introduces the main concepts and algorithms
  • Surveys recent work on kernel approaches to learning a similarity matrix from data

This book will be of interest to researchers, practitioners, engineers, and scientists in speech processing and machine learning fields.