HAPPY BOOKSGIVING
Use code BOOKSGIVING during checkout to save 40%-55% on books and eBooks. Shop now.
Register your product to gain access to bonus material or receive a coupon.
The state-of-the art in computer vision: theory, applications, and programming
Whether you're a working engineer, developer, researcher, or student, this is your single authoritative source for today's key computer vision innovations. Gerard Medioni and Sing Bing Kang present advances in computer vision such as camera calibration, multi-view geometry, and face detection, and introduce important new topics such as vision for special effects and the tensor voting framework. They begin with the fundamentals, cover select applications in detail, and introduce two popular approaches to computer vision programming.
Preface.
Contributors.
1. Introduction.
I. FUNDAMENTALS IN COMPUTER VISION.
2. Camera Calibration.
Zhengyou Zhang.
Introduction.
Notation and Problem Statement.
Camera Calibration with 3D Objects.
Camera Calibration with 2D Objects: Plane-Based Technique.
Solving Camera Calibration with 1D Objects.
Self-Calibration.
Conclusion.
Appendix: Estimating Homography Between Plane and Image.
Bibliography.
3. Multiple View Geometry.
Anders Heyden and Marc Pollefeys.
Introduction.
Projective Geometry.
Tensor Calculus.
Modeling Cameras.
Multiple View Geometry.
Structure and Motion I.
Structure and Motion II.
Autocalibration.
Dense Depth Estimation.
Visual Modeling.
Conclusion.
Bibliography.
4. Robust Techniques for Computer Vision.
Peter Meer.
Robustness in Visual Tasks.
Models and Estimation Problems.
Location Estimation.
Robust Regression.
Conclusion.
Bibliography.
5. The Tensor Voting Framework.
Gérard Medioni and Philippos Mordohai.
Introduction.
Related Work.
Tensor Voting in 2D.
Tensor Voting in 3D.
Tensor Voting in ND.
Application to Computer Vision Problems.
Conclusion and Future Work.
Acknowledgments.
Bibliography.
II. APPLICATIONS IN COMPUTER VISION.
6. Image-Based Lighting.
Paul E. Debevec.
Basic Image-Based Lighting.
Advanced Image-Based Lighting.
Image-Based Relighting.
Conclusion.
Bibliography.
7. Computer Vision In Visual Effects.
Doug Roble.
Introduction.
Computer Vision Problems Unique to Film.
Feature Tracking.
Optical Flow.
Camera Tracking and Structure from Motion.
The Future.
Bibliography.
8. Content-Based Image Retrieval: An Overview.
Theo Gevers and Arnold W. M. Smeulders
Overview of Chapter.
Image Domains.
Image Features.
Representation and Indexing.
Similarity and Search.
Interaction and Learning.
Conclusion.
Bibliography.
9. Face Detection, Alignment, and Recognition.
Stan Z. Li and Juwei Lu.
Introduction.
Face Detection.
Face Alignment.
Face Recognition.
Bibliography.
10. Perceptual Interfaces.
Matthew Turk and Mathias Kölsch
Introduction.
Perceptual Interfaces and HCI.
Multimodal Interfaces.
Vision-Based Interfaces.
Brain-Computer Interfaces.
Summary.
Bibliography.
III. PROGRAMMING FOR COMPUTER VISION.
Download the Index
file related to this title.