DocumentCode :
2623367
Title :
Multifunctional layered network with quantizer neurons
Author :
Maruno, Susumu ; Kohda, Toshiyuki ; Kojima, Yoshihiro ; Sakaue, Shigeo ; Yamamoto, Hiroshi ; Shimeki, Yasuharu
Author_Institution :
Matsushita Electr. Ind. Co. Ltd., Osaka, Japan
fYear :
1991
fDate :
18-21 Nov 1991
Firstpage :
541
Abstract :
The authors propose a multifunctional layered network (MFLN) with a quantizer neuron model and describe the principles of the quantizer neuron and the structure of the network for a character recognition system. Each layer of the MFLN has a specific function defined by the quantizer input of the quantizer neuron, and its learning speed is extremely fast. The authors have applied it to a character recognition system and tested its initial and supplemental learning performance in comparison with three other network models (RCE networks, LVQ3, and a multilayered neural network with back-propagation). For initial learning of ten fonts, the MFLN is fastest, and it is 40 times faster than the multilayered neural network with back-propagation. For supplemental learning with seven further fonts also, the MFLN is the fastest, and it is 600 times faster than the multilayered neural network with back-propagation. The recognition rate for 10 of the fonts learned initially is 97.4% after the MFLN has learned supplementary fonts, and the MFLN displays the lowest degradation of the recognition rate of initially learned fonts
Keywords :
character recognition; neural nets; parallel architectures; LVQ3; RCE networks; back-propagation; character recognition system; multifunctional layered network; quantizer neurons; Adaptive filters; Biological system modeling; Character recognition; Degradation; Filtering; Laboratories; Multi-layer neural network; Neural networks; Neurons; Power engineering and energy;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Neural Networks, 1991. 1991 IEEE International Joint Conference on
Print_ISBN :
0-7803-0227-3
Type :
conf
DOI :
10.1109/IJCNN.1991.170456
Filename :
170456
Link To Document :
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