DocumentCode
3329585
Title
Psychologically plausible features for shape recognition in a neural network
Author
Krishnan, Ganapathy ; Walters, Deborah
Author_Institution
Dept. of Comput. Sci., State Univ. of New York, Buffalo, NY, USA
fYear
1988
fDate
24-27 July 1988
Firstpage
127
Abstract
The authors describe how a simple linear associative model with a novel learning rule is used to learn psychologically plausible shape descriptors of simple shapes such as characters, digits, and electronic circuit components. Their results show the power of teaching a neural network to associate general-purpose features with categories instead of discovering these features after trial and error. The use of general-purpose features and the proposed learning rule make it possible to teach the system to discriminate with an accuracy of 94% for digits, characters, and electronic gates with about eight training examples/character. The main advantage in using general-purpose features is the invariance to size, and the speed of recognition and learning. The recognition and learning take about a second on a Sun-3 workstation. Unlike J.A. Anderson and M. Mozer´s (1981) model, this model does not overgeneralize, but learns to distinguish between distinct shapes that map on to the same abstract category. The relative importance of the features used in recognition is also discussed.<>
Keywords
learning systems; neural nets; pattern recognition; general-purpose features; learning rule; learning systems; linear associative model; neural network; pattern recognition; shape recognition; Learning systems; Neural networks; Pattern recognition;
fLanguage
English
Publisher
ieee
Conference_Titel
Neural Networks, 1988., IEEE International Conference on
Conference_Location
San Diego, CA, USA
Type
conf
DOI
10.1109/ICNN.1988.23920
Filename
23920
Link To Document