標題: Learnable self-feedback ratio-memory cellular nonlinear network (SRMCNN) for associative memory applications
作者: Lai, JL
Wu, Y
電子工程學系及電子研究所
Department of Electronics Engineering and Institute of Electronics
公開日期: 2004
摘要: A self-feedback ratio-memory cellular nonlinear network (SRMCNN) with the B template and the modified Hebbian learning algorithm to learn and recognize the image patterns is proposed and analyzed. In the proposed SRMCNN, the coefficients of space-variant B templates are determined from the exemplar patterns during the learning period. The weights are the ratio of the absolute summation of its neighborhood weights in the B templates was stored in the associative memory. This SRMCNN can recognize the learned patterns with distinct white-black noise and output the correct patterns. The Matlab and HSPICE software has been simulated the operation of the proposed SRMCNN. It is shown that the 18x18 SRMCNN can successfully learned and recognized 8 incompletely noisy patterns. As compared to other learnable CNN as associate memories, the proposed SRMCNN could improve pattern learning and recognition capability. The architecture can be implemented in nano-CMOS technology for giga-scale learning system in the real-time applications.
URI: http://hdl.handle.net/11536/18261
ISBN: 0-7803-8715-5
期刊: ICECS 2004: 11th IEEE International Conference on Electronics, Circuits and Systems
起始頁: 183
結束頁: 186
Appears in Collections:Conferences Paper