Title :
Pattern recognition using a neural network with the short term memory
Author :
Vladimir A. Kozynchenko;Mikhail Yu. Balabanov;Maxim S. Kolmakov
Author_Institution :
St. Peterburg State University, 7/9 Universitetskaya nab., 199034, Russia
Abstract :
The paper deals with the modification of the Hamming neural network designed for solving the problems of pattern recognition. It is proposed to divide the memory of a neural network in the short term and long term parts. To the Hamming network the additional layers and modulators are added, which provide the property of plasticity-stability of memory, like the networks in the adaptive resonance theory. An algorithm for the short-term memory consolidation is proposed that is based on the frequency of encountering the components of stored images.
Keywords :
"Neurons","Modulation","Biological neural networks","Hamming distance","Pattern recognition","Adaptive systems"
Conference_Titel :
"Stability and Control Processes" in Memory of V.I. Zubov (SCP), 2015 International Conference
DOI :
10.1109/SCP.2015.7342232