A recurrent perceptron learning algorithm for cellular neural networks

A supervised learning algorithm for obtaining the template coefficients in completely stable Cellular Neural Networks (CNNs) is analysed in the paper. The considered algorithm resembles the well-known perceptron learning algorithm and hence called as Recurrent Perceptron Learning Algorithm (RPLA) when applied to a dynamical network. The RPLA learns pointwise defined algebraic mappings from initial-state and input spaces into steady-state output space; despite learning whole trajectories through desired equilibrium points. The RPLA has been used for training CNNs to perform some image processing tasks and found to be successful in binary image processing. The edge detection templates found by RPLA have performances comparable to those of Canny’s edge detector for binary images.

[1]  Derong Liu,et al.  A new synthesis procedure for a class of cellular neural networks with space-invariant cloning template , 1998 .

[2]  Joos Vandewalle,et al.  Application of relaxation methods to the adaptive training of neural networks , 1989 .

[3]  A. K. Lu,et al.  An oversampling-based analog multitone signal generator , 1998 .

[4]  Ákos Zarándy The art of CNN template design , 1999 .

[5]  A. A. Mullin,et al.  Principles of neurodynamics , 1962 .

[6]  Leon O. Chua,et al.  Learning state space trajectories in cellular neural networks , 1992, CNNA '92 Proceedings Second International Workshop on Cellular Neural Networks and Their Applications.

[7]  Leon O. Chua,et al.  Genetic algorithm for CNN template learning , 1993 .

[8]  L. Chua,et al.  An analytic method for designing simple cellular neural networks , 1991 .

[9]  Josef A. Nossek,et al.  Cellular neural network design using a learning algorithm , 1990, IEEE International Workshop on Cellular Neural Networks and their Applications.

[10]  Josef A. Nossek DESIGN AND LEARNING WITH CELLULAR NEURAL NETWORKS , 1996 .

[11]  Lin-Bao Yang,et al.  Cellular neural networks: theory , 1988 .

[12]  M.E. Yalcin,et al.  CNNs with radial basis input function , 1996, 1996 Fourth IEEE International Workshop on Cellular Neural Networks and their Applications Proceedings (CNNA-96).

[13]  Fernando J. Pineda,et al.  Generalization of Back propagation to Recurrent and Higher Order Neural Networks , 1987, NIPS.

[14]  B. Gunsel,et al.  Supervised learning of smoothing parameters in image restoration by regularization under cellular neural networks framework , 1995, Proceedings., International Conference on Image Processing.

[15]  Janez Puhan,et al.  A rigorous design method for binary cellular neural networks , 1998 .

[16]  Josef A. Nossek,et al.  Towards a learning algorithm for discrete-time cellular neural networks , 1992, CNNA '92 Proceedings Second International Workshop on Cellular Neural Networks and Their Applications.

[17]  Leon O. Chua,et al.  Stability analysis of generalized cellular neural networks , 1993, Int. J. Circuit Theory Appl..

[18]  Joos Vandewalle,et al.  On the stability analysis of cellular neural networks , 1993 .

[19]  M. Balsi Generalized CNN: Potentials of a CNN with non-uniform weights , 1992, CNNA '92 Proceedings Second International Workshop on Cellular Neural Networks and Their Applications.

[20]  Derong Liu,et al.  Cloning template design of cellular neural networks for associative memories , 1997 .

[21]  S. Karamahmut,et al.  Recurrent perceptron learning algorithm for completely stable cellular neural networks , 1994, Proceedings of the Third IEEE International Workshop on Cellular Neural Networks and their Applications (CNNA-94).

[22]  Leon O. Chua,et al.  Cellular neural networks: Theory and circuit design , 1992, Int. J. Circuit Theory Appl..

[23]  C. Guzelis,et al.  Supervised learning of the steady-state outputs in generalized cellular networks , 1992, CNNA '92 Proceedings Second International Workshop on Cellular Neural Networks and Their Applications.

[24]  Leon O. Chua,et al.  Multiple Layer Cellular Neural Networks: A Tutorial , 1991 .