Wolverine Books
Search Advanced SearchView Cart   Checkout   
 Location:  Home » Books » Industrial » Machine Vision : Theory, Algorithms, Practicalities  
Categories
Books
DVDs
Music
Magazines
VHS
Food
Jewelry
Apparel
Sporting Goods
Outdoor
Subcategories
Compression
Cryptography
Data Structures
Digital Image Processing
Fractals
Fuzzy Logic
Genetic
Memory Management
Pattern Recognition
Real-Time Data Processing
Business
Databases
Directories
E-mail
Introductory Guides
Mathematical & Statistical
Natural Language Processing
Optical Character Recognition
Personal Finance
Spreadsheets
Voice Recognition
Word Processors & Editors
Accounting
Banking
Business Communication
Business Development
Business Ethics
Business Law
Economics
Enterpeneurship
Finance
Human Resources
International Business
Investments & Securities
Management
Marketing
Real Estate
Sales
All Titles
Arts & Photography
Biographies & Memoirs
Business & Investing
Children's Books
Computers & Internet
Cooking, Food & Wine
Engineering
Entertainment
Gay & Lesbian
Home & Garden
Literature & Fiction
Medicine
Nonfiction
Outdoors & Nature
Parenting & Families
Professional
Reference
Religion & Spirituality
Science
Teens
Travel

BlogRoll

Travel With Books

Related Categories
• Industrial
Management & Leadership
Business & Investing
Subjects
Books
• Algorithms
Programming
Computers & Internet
Subjects
Books
• Machine Vision
Artificial Intelligence
Computer Science
Computers & Internet
Subjects
• Theory of Computing
Artificial Intelligence
Computer Science
Computers & Internet
Subjects
• Computer Mathematics
Artificial Intelligence
Computer Science
Computers & Internet
Subjects
• Software
Computers & Internet
Subjects
Books
• Safety & Health
Technology
Science
Subjects
Books
• Computers & Internet: Programming: Algorithms: General
General
Archive
Custom Stores
Specialty Stores
• Computers & Internet: Computer Science: Artificial Intelligence: General
General
Archive
Custom Stores
Specialty Stores
• Computers & Internet: General
General
Archive
Custom Stores
Specialty Stores
• Computers & Internet: Software: General
General
Archive
Custom Stores
Specialty Stores
• Business & Finance
New & Used Textbooks
Custom Stores
Specialty Stores
Books
• Artificial Intelligence
Computer Science
New & Used Textbooks
Custom Stores
Specialty Stores
• Qualifying Textbooks
Custom Stores
Specialty Stores
Books
• Hardcover
Binding (binding)
Refinements
Books
• Printed Books
Format (feature_browse-bin)
Refinements
Books

Machine Vision : Theory, Algorithms, Practicalities

Machine Vision : Theory, Algorithms, Practicalities
Author: E. R. Davies
Publisher: Morgan Kaufmann
Category: Book

List Price: $87.95
Buy New: $70.35
You Save: $17.60 (20%)



New (25) Used (11) from $70.35

Avg. Customer Rating: 4.5 out of 5 stars 5 reviews
Sales Rank: 185383

Media: Hardcover
Edition: 3
Number Of Items: 1
Pages: 934
Shipping Weight (lbs): 4.6
Dimensions (in): 9.4 x 7.8 x 2.1

ISBN: 0122060938
Dewey Decimal Number: 006.37
EAN: 9780122060939
ASIN: 0122060938

Publication Date: December 22, 2004
Availability: Usually ships in 1-2 business days
Condition: All orders ship same business day via standard shipping (USPS Media Mail) if received by 1 PM CST.

Also Available In:

  • Paperback - Machine Vision: Theory, Algorithms, Practicalities (Signal Processing and Its Applications Series)
  • Hardcover - Machine Vision: Theory, Algorithms, Practicalities (Microelectronics and Signal Processing Series)
  • Digital - Machine Vision (Signal Processing and Its Applications Series)

Similar Items:

  • Computer Vision
  • Digital Image Processing (3rd Edition)
  • Algorithms for Image Processing and Computer Vision
  • Machine Vision Algorithms and Applications
  • Robot Vision (MIT Electrical Engineering and Computer Science)

Editorial Reviews:

Product Description
In the last 40 years, machine vision has evolved into a mature field embracing a wide range of applications including surveillance, automated inspection, robot assembly, vehicle guidance, traffic monitoring and control, signature verification, biometric measurement, and analysis of remotely sensed images. While researchers and industry specialists continue to document their work in this area, it has become increasingly difficult for professionals and graduate students to understand the essential theory and practicalities well enough to design their own algorithms and systems. This book directly addresses this need.

As in earlier editions, E.R. Davies clearly and systematically presents the basic concepts of the field in highly accessible prose and images, covering essential elements of the theory while emphasizing algorithmic and practical design constraints. In this thoroughly updated edition, he divides the material into horizontal levels of a complete machine vision system. Application case studies demonstrate specific techniques and illustrate key constraints for designing real-world machine vision systems.

Includes solid, accessible coverage of 2-D and 3-D scene analysis.
Offers thorough treatment of the Hough Transforma key technique for inspection and surveillance.
Brings vital topics and techniques together in an integrated system design approach.
Takes full account of the requirement for real-time processing in real applications.



Customer Reviews:

5 out of 5 stars use it to understand OpenCV   December 18, 2007
For the analyst wanting to get into image recognition, Davies offers a detailed look at the many methods used in the last 30-40 years. These include neural networks, support vector machines, and the Hough transform.

If you are tempted to use [or are using] the OpenCV code base for image research, then the book can be a vital theoretical framework. OpenCV is about the best open source image code out there on the net, but it is poorly documented. It does come with many methods for basic and vital operations like make a grayscale image from a colour image, and making a binary image from a grayscale image. But why the code does certain things (actually many things) is rarely explained. Try using this book for understanding. Plus, the text lets you get an idea of how to modify OpenCV for your purposes.

And if you are going to use this book with OpenCV, look closely at the section on using multiple classifiers for training and then testing against unknown images. It is the basic idea for the cascading classifiers used by OpenCV.

Along these lines, one improvement for a future edition of the book could be an analysis of code packages that are currently available for image processing. Just a thought. But it would greatly help people wanting an expert assessment on the efficacies of available packages. Or, on a more basic level, it would aid simply in delineating what is out there.



4 out of 5 stars Good survey of specific machine vision techniques   June 16, 2006
 10 out of 10 found this review helpful

To begin with, the latest edition of this book was published in 2004, so all reviews dated earlier than that are referring to a previous edition. This book is a good one on issues and algorithms as they pertain to machine vision versus general computer vision. If you want a good general textbook on computer vision try "Computer Vision" by Linda Shapiro. It has all of the background material and a firm foundation in all of the topics you would expect in a course on computer vision. This book also has a section on introductory computer vision topics, I just don't think it is as clear and as comprehensive as Shapiro's book, especially for students.

However, if you want an excellent treatment of the kinds of problems specific to machine vision - the detection of lines, holes, corners, circles, elipses, and polygons, for example, along with specific algorithm details, this book is very good. It also has good sections on pattern matching, motion estimation, and 3D machine vision. I would recommend it especially for those individuals who are already familiar with the basics of computer vision and would like a book on algorithms for solving specific problems in machine vision. I notice that Amazon only shows the table of contents for the previous edition, so I show the table of contents for the new edition next:

1. Vision, The Challenge

PART 1 - LOW-LEVEL VISION
2. Images and Imaging Operations
3. Basic Image Filtering Operations
4. Thresholding Techniques
5. Edge Detection
6. Binary Shape Analysis
7. Boundary Pattern Analysis
8. Mathematical Morphology

PART 2 - INTERMEDIATE-LEVEL VISION
9. Line Detection
10. Circle Detection
11. The Hough Transform and Its Nature
12. Ellipse Detection
13. Hole Detection
14. Polygon and Corner Detection
15. Abstract Pattern Matching Techniques

PART 3 - 3D VISION AND MOTION
16. The Three-Dimensional World
17. Tackling the Perspective n-Point Problem
18. Motion
19. Invariants and their Applications
20. Egomotion and Related Tasks
21. Image Transformations and Camera Calibration

Part 4 - TOWARDS REAL-TIME PATTERN RECOGNITION SYSTEMS
22. Automated Visual Inspection
23. Inspection of Cereal Grains
24. Statistical Pattern Recognition
25. Biologically Inspired Recognition Schemes
26. Texture
27. Image Acquisition
28. Real-Time Hardware and Systems Design Considerations

PART 5 - PERSPECTIVES ON VISION
29. Machine Vision, Art or Science?





5 out of 5 stars Solid Foundation to computer Vision   February 19, 2002
 6 out of 6 found this review helpful

First of all I like this book very much. This book provides a solid and concrete foundation to computer vision from engineering point of view. The basic issues are treated very well in the conceptual and practical levels (e.g. edge detection). I came from a photogrammetry background, which means that the geometric aspects are very dominant in my thinking, and this book emphasize many geometric concepts in computer vision specially the treatment of Hough Transform as a main theme in the book. I recommend this book to the practitioners in spatial sciences (GIS, Remote sensing, Photogrammetry, etc) as well as the general community of computer vision.


5 out of 5 stars Excellent resource   August 4, 2001
 4 out of 4 found this review helpful

Covers many aspects of vision, from basic image processing through high level scene analysis. It doesn't always go down to the nitty-gritty source code level for every topic, but it does provide the direction to handle most every common machine vision problem. Of the ten or so general machine vision books on my easy-access shelf, this is the one I seem to pull down the most.


4 out of 5 stars Good structured reference, very useful   June 6, 2000
 4 out of 5 found this review helpful

A very clearly structured book which is useful as a reference. Covers a lot of subjects (filtering, detection of shapes [lines, circles, holes and more], pattern matching/recognition, motion, invariants, ...), including the implementation aspects (hard/software). The chapters sometimes do not go much into deep but provide further references. Recommended book!

Powered by Associate-O-Matic

Contact Wolverine Books