Combining regularization frameworks for image deblurring: Optimization of combined hyper-parameters

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Abstract

Regularization is an important tool for restoration of images from noisy and blurred data. In this paper, we present a novel regularization technique (CGTik) that augments the conjugate gradient least-square (CGLS) algorithm with Tikhonov-like prior information term. This technique requires the appropriate selection of two hyper-parameters, the number of iterations (N) and amount of regularization (a). A method to select good values for these parameters is developed based on the L-curve technique. Tests were performed by calculating reconstructed images for each algorithm for heavily blurred images. CGTik showed improved restored images compared to the separate algorithms Tikhonov and CGLS.

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Youmaran, R., & Adler, A. (2004). Combining regularization frameworks for image deblurring: Optimization of combined hyper-parameters. In Canadian Conference on Electrical and Computer Engineering (Vol. 2, pp. 0723–0726). https://doi.org/10.1109/ccece.2004.1345216

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