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Chapter 1 Overview
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What Is OpenCV?
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Who Uses OpenCV?
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What Is Computer Vision?
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The Origin of OpenCV
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Downloading and Installing OpenCV
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Getting the Latest OpenCV via CVS
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More OpenCV Documentation
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OpenCV Structure and Content
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Portability
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Exercises
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Chapter 2 Introduction to OpenCV
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Getting Started
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First Program—Display a Picture
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Second Program—AVI Video
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Moving Around
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A Simple Transformation
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A Not-So-Simple Transformation
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Input from a Camera
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Writing to an AVI File
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Onward
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Exercises
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Chapter 3 Getting to Know OpenCV
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OpenCV Primitive Data Types
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CvMat Matrix Structure
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IplImage Data Structure
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Matrix and Image Operators
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Drawing Things
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Data Persistence
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Integrated Performance Primitives
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Summary
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Exercises
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Chapter 4 HighGUI
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A Portable Graphics Toolkit
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Creating a Window
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Loading an Image
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Displaying Images
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Working with Video
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ConvertImage
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Exercises
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Chapter 5 Image Processing
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Overview
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Smoothing
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Image Morphology
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Flood Fill
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Resize
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Image Pyramids
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Threshold
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Exercises
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Chapter 6 Image Transforms
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Overview
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Convolution
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Gradients and Sobel Derivatives
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Laplace
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Canny
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Hough Transforms
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Remap
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Stretch, Shrink, Warp, and Rotate
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CartToPolar and PolarToCart
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LogPolar
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Discrete Fourier Transform (DFT)
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Discrete Cosine Transform (DCT)
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Integral Images
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Distance Transform
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Histogram Equalization
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Exercises
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Chapter 7 Histograms and Matching
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Basic Histogram Data Structure
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Accessing Histograms
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Basic Manipulations with Histograms
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Some More Complicated Stuff
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Exercises
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Chapter 8 Contours
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Memory Storage
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Sequences
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Contour Finding
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Another Contour Example
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More to Do with Contours
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Matching Contours
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Exercises
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Chapter 9 Image Parts and Segmentation
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Parts and Segments
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Background Subtraction
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Watershed Algorithm
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Image Repair by Inpainting
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Mean-Shift Segmentation
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Delaunay Triangulation, Voronoi Tesselation
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Exercises
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Chapter 10 Tracking and Motion
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The Basics of Tracking
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Corner Finding
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Subpixel Corners
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Invariant Features
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Optical Flow
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Mean-Shift and Camshift Tracking
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Motion Templates
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Estimators
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The Condensation Algorithm
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Exercises
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Chapter 11 Camera Models and Calibration
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Camera Model
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Calibration
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Undistortion
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Putting Calibration All Together
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Rodrigues Transform
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Exercises
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Chapter 12 Projection and 3D Vision
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Projections
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Affine and Perspective Transformations
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POSIT: 3D Pose Estimation
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Stereo Imaging
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Structure from Motion
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Fitting Lines in Two and Three Dimensions
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Exercises
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Chapter 13 Machine Learning
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What Is Machine Learning
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Common Routines in the ML Library
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Mahalanobis Distance
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K-Means
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Naïve/Normal Bayes Classifier
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Binary Decision Trees
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Boosting
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Random Trees
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Face Detection or Haar Classifier
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Other Machine Learning Algorithms
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Exercises
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Chapter 14 OpenCV's Future
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Past and Future
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Directions
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OpenCV for Artists
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Afterword
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Chapter 15 Bibliography
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Colophon
- Title:
- Learning OpenCV
- By:
- Gary Bradski, Adrian Kaehler
- Publisher:
- O'Reilly Media
- Formats:
-
- Ebook
- Safari Books Online
- Print Release:
- September 2008
- Ebook Release:
- October 2008
- Pages:
- 576
- Print ISBN:
- 978-0-596-51613-0
- | ISBN 10:
- 0-596-51613-4
- Ebook ISBN:
- 978-0-596-15620-6
- | ISBN 10:
- 0-596-15620-0
The image on the cover of Learning OpenCV is a giant, or great, peacock moth (Saturnia pyri). Native to Europe, the moth's range includes southern France and Italy, the Iberian Peninsula, and parts of Siberia and northern Africa. It inhabits open landscapes with scattered trees and shrubs and can often be found in parklands, orchards, and vineyards, where it rests under shade trees during the day.
The largest of the European moths, giant peacock moths have a wingspan of up to six
inches; their size and nocturnal nature can lead some observers to mistake them for
bats. Their wings are gray and grayish-brown with accents of white and yellow. In the
center of each wing, giant peacock moths have a large eyespot, a distinctive pattern most
commonly associated with the birds they are named for.
