Pattern Recognition by Humans and Machines. Visual Perception
β Scribed by Eileen C. Schwab and Howard C. Nusbaum (Eds.)
- Publisher
- Academic Press
- Year
- 1986
- Tongue
- English
- Leaves
- 251
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Table of Contents
Content:
Inside Front Cover, Page ii
Front Matter, Page iii
Copyright, Page iv
Preface, Pages ix-xi
Contents of Volume 1, Page xiii
CHAPTER 1 - Visual Form Perception: An Overview, Pages 1-30, James R. Pomerantz
CHAPTER 2 - FigureβGround Organization and the Spatial and Temporal Responses of the Visual System, Pages 31-64, Naomi Weisstein, Eva Wong
CHAPTER 3 - Eye Movements and Visual Pattern Perception, Pages 65-86, Bruno G. Breitmeyer
CHAPTER 4 - A Computer Vision Model Based on Psychophysical Experiments, Pages 87-120, Deborah K.W. Walters
CHAPTER 5 - Schemas and Perception: Perspectives from Brain Theory and Artificial Intelligence, Pages 121-157, Michael A. Arbib
CHAPTER 6 - Visual Routines: Where Bottom-Up and Top-Down Processing Meet, Pages 159-218, Shimon Ullman
CHAPTER 7 - Knowledge-Mediated Perception, Pages 219-236, Eugene C. Freuder
Index, Pages 237-245
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