An Introduction into Theory and Algorithms
Reinhard Klette

#Computer_Vision
#Algorithms
This textbook provides an accessible general introduction to the essential topics in computer vision. Classroom-tested programming exercises and review questions are also supplied at the end of each chapter. Features: provides an introduction to the basic notation and mathematical concepts for describing an image and the key concepts for mapping an image into an image; explains the topologic and geometric basics for analysing image regions and distributions of image values and discusses identifying patterns in an image; introduces optic flow for representing dense motion and various topics in sparse motion analysis; describes special approaches for image binarization and segmentation of still images or video frames; examines the basic components of a computer vision system; reviews different techniques for vision-based 3D shape reconstruction; includes a discussion of stereo matchers and the phase-congruency model for image features; presents an introduction into classification and learning.
Many textbooks on computer vision can be unwieldy and intimidating in their coverage of this extensive discipline. This textbook addresses the need for a concise overview of the fundamentals of this field.
Concise Computer Vision provides an accessible general introduction to the essential topics in computer vision, highlighting the role of important algorithms and mathematical concepts. Classroom-tested programming exercises and review questions are also supplied at the end of each chapter.
Topics and features:
This concise and easy to read textbook/reference is ideal for an introductory course at third- or fourth-year level in an undergraduate computer science or engineering programme.
Contents
Chapter 1: Image Data
Chapter 2: Image Processing
Chapter 3: Image Analysis
Chapter 4: Dense Motion Analysis
Chapter 5: Image Segmentation
Chapter 6: Cameras, Coordinates, and Calibration
Chapter 7: 30 Shape Reconstruct ion
Chapter 8: Stereo Matching
Chapter 9: Feature Detect ion and Tracking
Chapter 10: Object Detection
Dr. Reinhard Klette, Fellow of the Royal Society of New Zealand, is a Professor at the University of Auckland. His numerous other publications include the Springer title Euclidean Shortest Paths: Exact or Approximate Algor









