Image Pattern Recognition
β Scribed by V. A. Kovalevsky (auth.)
- Publisher
- Springer-Verlag New York
- Year
- 1980
- Tongue
- English
- Leaves
- 251
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
During the last twenty years the problem of pattern recognition (specifically, image recognition) has been studied intensively by many investigators, yet it is far from being solved. The number of publications increases yearly, but all the experimental results-with the possible exception of some dealing with recognition of printed characters-report a probability of error significantly higher than that reported for the same images by humans. It is widely agreed that ideally the recognition problem could be thought of as a problem in testing statistical hypotheses. However, in most applications the immediate use of even the simplest statistical device runs head on into grave computational difficulties, which cannot be eliminated by recourse to general theory. We must accept the fact that it is impossible to build a universal machine which can learn an arbitrary classification of multidimensional signals. Therefore the solution of the recognition problem must be based on a priori postulates (concerning the sets of signals to be recognized) that will narrow the set of possible classifications, i.e., the set of decision functions. This notion can be taken as the methodological basis for the approach adopted in this book.
β¦ Table of Contents
Front Matter....Pages i-xi
The Current State of the Recognition Problem....Pages 1-39
A Parametric Model of the Image-Generating Process....Pages 40-56
The Parametric Learning Problem....Pages 57-66
On the Criteria for the Information Content of a System of Features....Pages 67-90
The Method of Admissible Transformations....Pages 91-116
Optimization of the Parameters of a Piecewise Linear Decision Rule....Pages 117-144
The Reference-Sequence Method....Pages 145-176
The Recognition of Sequences of Images....Pages 177-198
The βΔARSβ Character Reader....Pages 199-227
Back Matter....Pages 228-241
β¦ Subjects
Pattern Recognition
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