"Modeling the human ability to identify objects in images
has proved to be a significant challenge. While
computer
vision researchers have largely concentrated on the
geometric aspects of the problem such as
recognition under
varying poses, researchers in statistics and machine
learning typically have treated the problem as one of
classifying feature vectors. In this important book, Yali
Amit presents a novel synthesis of these strands of
research. His approach to recognition based on learned
configurations of
sparse features provides a rare
combination of efficient algorithms based on a solid
statistical foundation. Amit's thorough and well-documented
experimentation with examples ranging from medical images
to handwritten digits should set a standard for the field.
Highly recommended."
Jitendra Malik, department of computer science, university
of California at Berkeley"The book develops a novel and
elegant approach to the important problem of visual object
recognition. The efficient and well-motivated algorithms
have fundamental theoretical as well as practical
implications for the study of computer vision. The book
will appeal to computer scientists as well as researchers
modeling the functions of biological visual systems."
Shimon Ullman, The Weizmann Institute of science,
Israël
Contents
- Introduction
- Detection and Recognition: Overview of Models
- 1D Models: Deformable Contours
- 1D Models: Deformable Curves
- 2D Models: Deformable Images
- Sparse Models: Formulation, Training, and Statistical
Properties
- Detection of Sparse Models: Dynamic Programming
- Detection of Sparse Models: Counting
- Object Recognition
- Scene Analysis: Merging Detection and Recognition
- Neural Network Implementations
- Software