Title :
RBFN restoration of nonlinearly degraded images
Author :
Cha, Inhyok ; Kassam, Saleem A.
Author_Institution :
Dept. of Electr. Eng., Pennsylvania Univ., Philadelphia, PA, USA
fDate :
6/1/1996 12:00:00 AM
Abstract :
We investigate a technique for image restoration using nonlinear networks based on radial basis functions. The technique is also based on the concept of training or learning by examples. When trained properly, these networks are used as spatially invariant feedforward nonlinear filters that can perform restoration of images degraded by nonlinear degradation mechanisms. We examine a number of network structures including the Gaussian radial basis function network (RBFN) and some extensions of it, as well as a number of training algorithms including the stochastic gradient (SG) algorithm that we have proposed earlier. We also propose a modified structure based on the Gaussian-mixture model and a learning algorithm for the modified network. Experimental results indicate that the radial basis function network and its extensions can be very useful in restoring images degraded by nonlinear distortion and noise
Keywords :
Gaussian processes; feedforward; image restoration; learning by example; noise; nonlinear filters; Gaussian radial basis function network; Gaussian-mixture model; RBFN restoration; image restoration; learning by example; network structures; nonlinear distortion; nonlinear networks; nonlinear noise; nonlinearly degraded images; spatially invariant feedforward nonlinear filters; stochastic gradient algorithm; training; Additive noise; Degradation; Gaussian processes; Image processing; Image restoration; Nonlinear distortion; Nonlinear filters; Radial basis function networks; Stochastic processes; Wiener filter;
Journal_Title :
Image Processing, IEEE Transactions on