Sensor Review: Gas Discharges and Thermal Imaging, Volume 23, Number 1, 2003

2D Object Detection and Recognition: Models, Algorithms and Networks
Yali Amit
MIT Press
2002
306 pp.
ISBN 0-262-01194-8
29.95 hardback
Keywords Algorithms, Networks, Image processing
This book addresses two important aspects of computer vision, namely the detection and recognition of 2D objects. It presents a range of template models, techniques for their efficient implementation and how neural networks can be used to overcome variations in the object or the classifier.
The first chapter provides an introduction to image processing and presents topics including low-level image analysis and bottom-up segmentation, object detection with deformable template models, object recognition, and scene analysis. Chapter 2, Detection and Recognition: Overview of Models, discusses the Bayesian approach to detection, and overview of object detection models, and network implementations.
The following six chapters provide in-depth coverage of the detection algorithms. Chapters 3 and 4 present ID Models: Deformable Contours and Deformable Curves, respectively. The inside-outside model, an edge-based data model, joint estimation of the curve and the parameters, statistical models, and global optimisation of a tree structured prior, are amongst the topics discussed. 2D Models: Deformable Images, are addressed in chapter 5, while chapter 6 presents Sparse Models: Formulation, Training and Statistic Properties. The prior model and detecting pose are amongst the subjects discussed in chapter 7, the Detection of Sparse Models: Dynamic Programming. Chapter 8, Detection of Sparse Models: Counting, addresses detecting candidate centres, computing pose and instantiation parameters, density of candidate centres and false positives, and examples.
Chapter 9, Object Recognition, provides techniques...