

Paperback: 555 pages
Publisher: O'Reilly Media; 1st edition (October 4, 2008)
Language: English
ISBN-10: 0596516134
ISBN-13: 978-0596516130
Product Dimensions: 7 x 1.2 x 9.2 inches
Shipping Weight: 1.7 pounds (View shipping rates and policies)
Average Customer Review: 4.2 out of 5 stars See all reviews (49 customer reviews)
Best Sellers Rank: #215,363 in Books (See Top 100 in Books) #9 in Books > Computers & Technology > Hardware & DIY > Microprocessors & System Design > DSPs #32 in Books > Computers & Technology > Computer Science > AI & Machine Learning > Computer Vision & Pattern Recognition #47 in Books > Computers & Technology > Programming > Languages & Tools > C & C++ > Tutorials

This book is excellent at exposing the reader to the various methods available in OpenCV and showing via code examples how to use each one. The author also gives you the website where you can look at the actual source code of each method shown. This is helpful since, for example, if you want to know exactly how the code is going about calculating the Fundamental Matrix, it is difficult to determine this by reading the book alone.This book would be most useful to someone who already has a fundamental understanding of computer vision and image processing and wants to see how OpenCV will make their programming tasks easier. It does this by coding up well known algorithms into reliable pieces of code that you can use to accomplish more complex tasks. Do not come to this book if you are seeking to learn computer vision. You will only be confused as the author does not offer enough detail to teach you the mathematical foundations. However, I don't think that was his intention at all. Instead it is part user manual, part basic computer vision tutorial and overview, and part idea book. Each chapter is supplemented with excellent and interesting programming exercises that test your knowledge of what has been presented in a practical setting.For a good basic understanding of computer vision try Computer Vision. To understand the algorithmic underpinnings of 3D computer vision try Introductory Techniques for 3-D Computer Vision.
As a computer instructor and researcher in biometrics and pattern recognition, I welcome this treatise on OpenCV.Don't even consider opening the pages unless you are familiar with C, its use of structs, pointers, callback functions and the like. You may also be put off by the various mathematical discussions of various advanced computer vision algorithms that have been developed over the last two decades.OpenCV is an open-source collaborative work. It's partially supported by the Intel corporation, through their quest for advanced algorithms that might be included in its computer chips. Many low-level tools needed for video and image processing are now provided in advanced Intel microprocessors.The theme of OpenCV is audacious, yet achievable -- that of providing high-quality, high-performance software tools for the many computer vision algorithms that have been published over the years. That has largely been achieved through the clever use of low-level pointer-based tools, accompanied by complete C source code for everything down to the raw processor instructions.Other good news is that the system provides an easy portal to advanced Intel hardware support, boosting performance to the highest possible level. One can also port OpenCV-based code to Linux, other Unix and Mac platforms -- it is not restricted to Windows.I've had some trouble with Windows XP, but the image and camera grabbing functions work well under Windows Vista. I've also been able to exploit the OpenCV tools under Windows MFC to support Windows-based applications.This O'Reilly book provides the background support that you will need to download the OpenCV system from the internet, configure your development environment and start exploring the magic that its tools can provide.
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