DocumentCode :
2699289
Title :
Percognitron: Neocognitron coupled with perceptron
Author :
Sung, Chen-Han ; Wilson, Daniel
fYear :
1990
fDate :
17-21 June 1990
Firstpage :
753
Abstract :
Proposes two neural network models, Percognitron I and II, for position- and deformation-invariant visual pattern-recognition systems. The number of synapses between the Us4 and Uc4 levels of the Neocognitron are increased to achieve full interconnection among the nodes of the two levels. Then, Percognitron I is used to adapt the excitatory synapses between the Us4 and Uc4 levels using a single-layer perceptron-type adaptation. Percognitron II is then used to adapt the excitatory synapses between the Us4 and Uc4 levels and between the Us4 and Uc3 levels using a backpropagation-type adaptation. The rate of adaptation is controlled with a user-supplied gain factor for each level that is adapted. The autonomy of the Percognitrons having a fully interconnected fourth layer is briefly illustrated in comparison to D.H. Hubel and T.N. Wiesel´s (1962, 1965) hierarchical model. The Percognitron is shown to effectively recognize handwritten Arabic numerals. The proposed approach can successfully recognize a greater variety of patterns, including distorted or shifted patterns, than the Neocognitron
Keywords :
character recognition; cognitive systems; neural nets; Neocognitron; Percognitron; adaptation rate; backpropagation-type adaptation; character recognition; deformation invariance; distorted patterns; excitatory synapses; handwritten Arabic numerals; hierarchical model; neural network models; node interconnection; position invariance; shifted patterns; single-layer perceptron-type adaptation; user-supplied gain factor; visual pattern-recognition systems;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Neural Networks, 1990., 1990 IJCNN International Joint Conference on
Conference_Location :
San Diego, CA, USA
Type :
conf
DOI :
10.1109/IJCNN.1990.137928
Filename :
5726886
Link To Document :
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