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Pattern Recognition, Third Edition
 
 

Pattern Recognition, Third Edition [Hardcover]

Sergios Theodoridis (Author), Konstantinos Koutroumbas (Author)
4.2 out of 5 stars  See all reviews (13 customer reviews)


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Pattern Recognition, Fourth Edition Pattern Recognition, Fourth Edition 3.9 out of 5 stars (9)
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Book Description

0123695317 978-0123695314 March 10, 2006 3
A classic -- offering comprehensive and unified coverage with a balance between theory and practice!

Pattern recognition is integral to a wide spectrum of scientific disciplines and technologies including image analysis, speech recognition, audio classification, communications, computer-aided diagnosis, and data mining. The authors, leading experts in the field of pattern recognition, have once again provided an up-to-date, self-contained volume encapsulating this wide spectrum of information.

Each chapter is designed to begin with basics of theory progressing to advanced topics and then discusses cutting-edge techniques. Problems and exercises are present at the end of each chapter with a solutions manual provided via a companion website where a number of demonstrations are also available to aid the reader in gaining practical experience with the theories and associated algorithms.

This edition includes discussion of Bayesian classification, Bayesian networks, linear and nonlinear classifier design (including neural networks and support vector machines), dynamic programming and hidden Markov models for sequential data, feature generation (including wavelets, principal component analysis, independent component analysis and fractals), feature selection techniques, basic concepts from learning theory, and clustering concepts and algorithms. This book considers classical and current theory and practice, of both supervised and unsupervised pattern recognition, to build a complete background for professionals and students of engineering.

FOR INSTRUCTORS: To obtain access to the solutions manual for this title simply register on our textbook website (textbooks.elsevier.com)and request access to the Computer Science or Electronics and Electrical Engineering subject area. Once approved (usually within one business day) you will be able to access all of the instructor-only materials through the "Instructor Manual" link on this book's full web page.

* The latest results on support vector machines including v-SVM's and their geometric interpretation
* Classifier combinations including the Boosting approach
* State-of-the-art material for clustering algorithms tailored for large data sets and/or high dimensional data, as required by applications such as web-mining and bioinformatics
* Coverage of diverse applications such as image analysis, optical character recognition, channel equalization, speech recognition and audio classification

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Editorial Reviews

Review

"The book is written in a very readable, no-nonsense style. I found that there was just the right amount of text to describe a concept, without extraneous verbiage. The same is true for the mathematics, enough for description, not too much to overwhelm."
Larry O'Gorman, IAPR Newsletter, April 2006

Book Description

A classic that offers comprehensive coverage with a balance between theory and practice.

Product Details

  • Hardcover: 856 pages
  • Publisher: Academic Press; 3 edition (March 10, 2006)
  • Language: English
  • ISBN-10: 0123695317
  • ISBN-13: 978-0123695314
  • Product Dimensions: 9.1 x 6.3 x 1.3 inches
  • Shipping Weight: 2.8 pounds
  • Average Customer Review: 4.2 out of 5 stars  See all reviews (13 customer reviews)
  • Amazon Best Sellers Rank: #1,805,779 in Books (See Top 100 in Books)

More About the Author

Sergios Theodoridis is currently Professor of Signal Processing and Communications in the Department of Informatics and Telecommunications of the University of Athens.

His research interests lie in the areas of Adaptive Algorithms and Communications, Machine Learning and Pattern Recognition, Signal Processing for Audio Processing and Retrieval.

His general interests lie in the areas of listening to music, enjoying the company of good friends and arguing with his students.

He is the co-editor of the book "Efficient Algorithms for Signal Processing and System Identification", Prentice Hall 1993, the co-author of the best selling book "Pattern Recognition", Academic Press, 4th ed. 2008, the co-author of the book "Introduction to Pattern Recognition: A MATLAB Approach", Academic Press, 2009, and the co-author of three books in Greek, two of them for the Greek Open University.

He is the co-author of four papers that have received best paper awards including the 2009 IEEE Computational Intelligence Society Transactions on Neural Networks Outstanding Paper Award. He currently serves as an IEEE Signal Processing Society Distinguished Lecturer.

He is currently an Associate Editor of the IEEE Transactions on Neural Networks. He has served in the past as an AE of the IEEE Transactions on Signal Processing, the IEEE Signal Processing Magazine, IEEE Transactions on Circuits and Systems and a member of the editorial boards of the EURASIP Journal on Wireless Communications and Networking, the EURASIP Journal on Signal Processing and the EURASIP Journal on Advances on Signal Processing.

He was the general chairman of EUSIPCO-98, the Technical Program co-chair for ISCAS-2006 and co-chairman of CIP-2008. He has served as President of the European Association for Signal Processing (EURASIP) and he is currently a member of the Board of Governors for the IEEE CAS Society.

He is a member of the Greek National Council for Research and Technology and Chairman of the SP advisory committee for the Edinburgh Research Partnership (ERP). He has served as vice chairman of the Greek Pedagogical Institute and he was for four years member of the Board of Directors of COSMOTE (the Greek mobile phone operating company). He is Fellow of IET, a Corresponding Fellow of FRSE and a Fellow of IEEE.

 

Customer Reviews

13 Reviews
5 star:
 (8)
4 star:
 (2)
3 star:
 (1)
2 star:
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1 star:
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Average Customer Review
4.2 out of 5 stars (13 customer reviews)
 
 
 
 
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Most Helpful Customer Reviews

7 of 7 people found the following review helpful:
5.0 out of 5 stars A good book to learn the subject, April 25, 2006
By 
L. Wang (Santa Barbara, CA) - See all my reviews
(REAL NAME)   
This review is from: Pattern Recognition (Hardcover)
I bought this book to teach my students on the subject. I am a professor in computer engineering and PR was not my research focus. However, there are many topics covered in this book, which have become more applicable in our area of research (VLSI design). We found this book easy to use. The algorithms are clearly described and my students could implement them easily by just reading the specific chapters we need. We think this is an excellent book to teach ourselves how to apply various PR algorithms in our domain.
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21 of 26 people found the following review helpful:
5.0 out of 5 stars An excellent book for pattern recognition, September 14, 2000
By 
Todd Ebert (Long Beach California) - See all my reviews
This review is from: Pattern Recognition (Hardcover)
I think the authors provide a nice balance between theory and practice. On one hand, the algorithms presented can and are meant to be implemented for testing. On the other hand, the authors provide a fairly sound mathematical treatment of areas such as Markov Models, clustering, and template matching. Most important, the authors do not focus attention only on one type of problem (e.g. character recognition). Thus researchers from all walks of pattern recognition should get something out of this book.

Two big thumbs up!

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6 of 6 people found the following review helpful:
5.0 out of 5 stars Pattern Recognition, June 24, 2006
This review is from: Pattern Recognition, Third Edition (Hardcover)
Professor Theodoridis has written an exciting new book on pattern recognition. The topic is sometimes neglected, particularly in the fields of biomedical and electrical engineering, but it is essential to the understanding of signal and image shape on a mathematical basis, including similarities and differences in shape as well as how to extract, recognize, and measure the important components. Professor Theodoridis covers all of the classic steps in pattern recognition in great detail and in a readily understood fashion: sensors and pattern extraction, features extraction and selection, clustering, classification, supervised and unsupervised recognition, and evaluation of the system. Each section is backed up with computer simulation examples so that the reader can gain practical experience while reading the book. The author discusses essential concepts for computer programming of the pattern recognition techniques that are discussed. This work is necessarily mathematical, and therefore will tend to be of greatest interest to advanced students and practicing engineers in a variety of fields. Biomedical engineering is a rapidly expanding field that is key to the improvement of health care quality. There are plenty of biomedical examples including those in the section of the book on computer-aided diagnosis, such as for the detection of cancerous lesions in x-ray mammography. The section on speech recognition will be useful to engineers who are designing turnkey pattern recognition systems that include speech recognition as input and/or for use as a security key. Also included in the work are the most recently developed topics of interest including fuzzy clustering algorithms, and neural networks using genetic and annealing methods. This comprehensive work should prove to be an invaluable tool for the library of design engineers who work with signals and images. I heartily recommend it to all with a basic engineering background.

Edward Ciaccio, PhD
Assoc. Professor of Biomedical Engineering
Columbia University in New York
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