Supervised learning of smoothing parameters in image restoration by regularization under cellular neural networks framework

Estimation of the smoothing parameters is one of the difficult problems in using regularization techniques for image restoration. The paper shows how cellular neural networks (CNNs) incorporated with a learning algorithm can be useful in adaptive learning of the smoothing parameters of regularization. A CNN model is designed to minimize the regularization cost function which is in a quadratic form. The connection weights of this CNN are obtained by comparing the cost function with a Lyapunov function. Unlike the common approaches in the literature, instead of using the learning connection weights of the neural networks, we propose supervised learning of the regularization smoothing parameters by a modified version of the recurrent perceptron learning algorithm (RPLA) which is developed for completely stable CNNs operating in a bipolar binary output mode. It is concluded that CNNs with the RPLA provides a set of suitable smoothing parameters resulting in a robust restoration of noisy images. For comparison, experimental results obtained by a median filter are also reported.

[1]  Aggelos K. Katsaggelos,et al.  Image restoration using a modified Hopfield network , 1992, IEEE Trans. Image Process..

[2]  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).

[3]  B. K. Jenkins,et al.  Image restoration using a neural network , 1988, IEEE Trans. Acoust. Speech Signal Process..

[4]  J. J. Hopfield,et al.  “Neural” computation of decisions in optimization problems , 1985, Biological Cybernetics.

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

[6]  Anil K. Jain,et al.  Visual surface reconstruction and boundary detection using stochastic models , 1992, Proceedings., 11th IAPR International Conference on Pattern Recognition. Vol. III. Conference C: Image, Speech and Signal Analysis,.

[7]  Federico Girosi,et al.  Parallel and Deterministic Algorithms from MRFs: Surface Reconstruction , 1991, IEEE Trans. Pattern Anal. Mach. Intell..