Title :
CNNs with radial basis input function
Author :
M.E. Yalcin;C. Guzelis
Author_Institution :
Fac. of Electr.-Electron. Eng., Istanbul Tech. Univ., Turkey
Abstract :
This paper proposes a cellular neural network (CNN) model with radial basis input function (radial basis input CNN) for improving function approximation ability of CNNs. The model can be viewed as a cascade of two units: the first unit is a multi-input, multi-output radial basis function network (RBFN), the second unit is the original CNN model. The weights and centers of the RBFN unit are chosen identical for all RBFN outputs yielding a space-invariant connection weight pattern over the network. With such a weight sharing property, the proposed model becomes a special kind of nonlinear B-template CNN. The ability of the radial basis input CNN model in approximation to functions as its input-(steady state) output mapping is examined on an edge detection task for noisy images. A modified version of the recurrent perceptron learning algorithm (RPLA) is used for the training radial basis input CNN.
Keywords :
"Cellular neural networks","Design methodology","Feedback","Function approximation","Image edge detection","Steady-state","Algorithm design and analysis","Electronic mail","Radial basis function networks","Image processing"
Conference_Titel :
Cellular Neural Networks and their Applications, 1996. CNNA-96. Proceedings., 1996 Fourth IEEE International Workshop on
Print_ISBN :
0-7803-3261-X
DOI :
10.1109/CNNA.1996.566562