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8 July 1994Blind deconvolution of images using neural networks
In this paper we consider the blind deconvolution of an image from an unknown blurring function using a technique employing two nested Hopfield neural networks. This iterative method consists of two steps, first estimating the blurring function followed by the use of this function to estimate the original image. The successive inter-linked energy minimizations are found to converge in practice although a convergence proof has not yet been established.
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Ronald J. Steriti, Michael A. Fiddy, "Blind deconvolution of images using neural networks," Proc. SPIE 2241, Inverse Optics III, (8 July 1994); https://doi.org/10.1117/12.179744