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A variational approach for restoring images corrupted by noisy blur kernels and additive noise
Authors:Michael K Ng  Wei Wang  Xile Zhao
Institution:1. Centre for Mathematical Imaging and Vision and Department of Mathematics, Hong Kong Baptist University, Kowloon Tong, Hong Kong;2. School of Mathematical Sciences, Tongji University, Shanghai, China;3. School of Mathematical Sciences, University of Electronic Science and Technology of China, China
Abstract:In this paper, we study a deblurring algorithm for distorted images by random impulse response. We propose and develop a convex optimization model to recover the underlying image and the blurring function simultaneously. The objective function is composed of 3 terms: the data‐fitting term between the observed image and the product of the estimated blurring function and the estimated image, the squared difference between the estimated blurring function and its mean, and the total variation regularization term for the estimated image. We theoretically show that under some mild conditions, the resulting objective function can be convex in which the global minimum value is unique. The numerical results confirm that the peak‐to‐signal‐noise‐ratio and structural similarity of the restored images by the proposed algorithm are the best when the proposed objective function is convex. We also present a proximal alternating minimization scheme to solve the resulting minimization problem. Numerical examples are presented to demonstrate the effectiveness of the proposed model and the efficiency of the numerical scheme.
Keywords:convex optimization  image restoration  proximal alternating minimization  random blurring function  total variation
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