Data management and Internet computing for image/pattern analysis by David Zhang

Cover of: Data management and Internet computing for image/pattern analysis | David Zhang

Published by Kluwer Academic Publishers in Boston .

Written in English

Read online

Subjects:

  • Database management.,
  • Internet programming.,
  • Image processing -- Digital techniques.

Edition Notes

Includes bibliographical references and index.

Book details

Statementby David Zhang, Xiaobo Li, Zhiyong Liu.
SeriesKluwer international series on Asian studies in computer and information science -- 11
ContributionsLi, X., Liu, Zhiyong, 1946-
Classifications
LC ClassificationsQA76.9.D3 Z53 2001
The Physical Object
Paginationxiii, 365 p. :
Number of Pages365
ID Numbers
Open LibraryOL22433290M
ISBN 100792374568
LC Control Number2001037750

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Data Management and Internet Computing for Image/Pattern Analysis focuses on the data management issues and Internet computing aspect of image processing and pattern recognition research.

The book presents a comprehensive overview of the state of the art, providing detailed case studies that emphasize how image and pattern (IAP) data are distributed and exchanged on sequential and parallel machines, and how the data communication patterns in low- and higher-level IAP computing.

Data Management and Internet Computing for Image/Pattern Analysis (The International Series on Asian Studies in Computer and Information Science) [David D.

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Data Management and Internet Computing for Image/Pattern Analysis focuses on the data management issues and Internet computing aspect of image processing and pattern recognition research. The book presents a comprehensive overview. Computing for ImagePattern Analysis focuses on the data management issues and Internet computing aspect of image processing and pattern recognition research.

The book presents a comprehensive overview of the state of the art, providing detailed case studies that emphasize how image and pattern (IAP) data are distributed and exchanged on sequential and parallel machines, and how the data communication patterns in low- and Download PDF Data Management and Internet Computing.

Data Management and Internet Computing for Image/Pattern Analysis focuses on the data management issues and Internet computing aspect of image processing and pattern recognition research.

Summary: Data Management and Internet Computing for Image/Pattern Analysis focuses on the data management issues and Internet computing aspect of image processing and pattern recognition research. Data management and Internet computing for image/pattern analysis. By D Zhang, X Li and Z Liu.

Abstract. Department of Computing > Academic research: refereed > Research book or monograph (author Database management, Internet programming, Image processing Author: David Zhang, Xiaobo Li, Zhiyong Liu.

Overall I enjoyed the book. I found that the subjects were well discussed and at a level that suited my knowledge. I would recommend it as a general purpose book for image and video analysis .” (Gavin Powell, International Association for Pattern Recognition, Vol.

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