Title :
Weight assignment for adaptive image restoration by neural networks
Author :
Perry, Stuart W. ; Guan, Ling
Author_Institution :
Maritime Oper. Div., Defence Sci. & Technol. Organ., Pymont, NSW, Australia
fDate :
1/1/2000 12:00:00 AM
Abstract :
This paper presents a scheme for adaptively training the weights, in terms of varying the regularization parameter, in a neural network for the restoration of digital images. The flexibility of neural-network-based image restoration algorithms easily allow the variation of restoration parameters such as blur statistics and regularization value spatially and temporally within the image. This paper focuses on spatial variation of the regularization parameter. We first show that the previously proposed neural-network method based on gradient descent can only find suboptimal solutions, and then introduce a regional processing approach based on local statistics. A method is presented to vary the regularization parameter spatially. This method is applied to a number of images degraded by various levels of noise, and the results are examined. The method is also applied to an image degraded by spatially variant blur. In all cases, the proposed method provides visually satisfactory results in an efficient way
Keywords :
image restoration; neural nets; adaptive image restoration; blur statistics; local statistics; neural networks; regional processing approach; regularization parameter; regularization value; restoration parameters; weight assignment; Australia; Degradation; Distortion measurement; Filtering; Image restoration; Iterative methods; Neural networks; Statistics; Wavelet transforms; Wiener filter;
Journal_Title :
Neural Networks, IEEE Transactions on