Title: A learnable cellular neural network structure with ratio memory for image processing
Authors: Wu, CY
Cheng, CH
電子工程學系及電子研究所
Department of Electronics Engineering and Institute of Electronics
Keywords: cellular neural network (CNN);divider;multiplier;ratio memory (RM)
Issue Date: 1-Dec-2002
Abstract: In this paper, a learnable cellular neural network (CNN) with space-variant templates and ratio memory (RM) called the RMCNN, is proposed and analyzed. By incorporating both modified Hebbian learning rule and RM into CNN architecture, the RMCNN as the associative memory can generate the absolute weights and then transform them into the ratioed A-template weights as the ratio memories for recognition of noisy input patterns. It is found from simulation results that due to the feature enhancement effect of RM, the RMCNN under constant leakage on template coefficients can store and recognize more patterns than the CNN associative memories without RM, but with the same learning rule and the same constant leakage on space-variant template coefficients. For 9 x 9 (18 x 18) RMCNNs, three (five) patterns can be learned, stored and recognized. Based upon the RMCNN architecture, an experimental chip of CMOS 9 x 9 RMCNN is designed and fabricated by using 0.35 mum CMOS technology. The measurement results have successfully verified the correct functions of RMCNN.
URI: http://dx.doi.org/10.1109/TCSI.2002.805697
http://hdl.handle.net/11536/28362
ISSN: 1057-7122
DOI: 10.1109/TCSI.2002.805697
Journal: IEEE TRANSACTIONS ON CIRCUITS AND SYSTEMS I-FUNDAMENTAL THEORY AND APPLICATIONS
Volume: 49
Issue: 12
Begin Page: 1713
End Page: 1723
Appears in Collections:Articles


Files in This Item:

  1. 000180273100003.pdf

If it is a zip file, please download the file and unzip it, then open index.html in a browser to view the full text content.