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Blind restoration of real turbulence-degraded image with complicated backgrounds using anisotropic regularization
Authors:Hanyu Hong  Liangcheng LiTianxu Zhang
Institution:a Lab for Image Processing and Intelligent Control, Wuhan Institute of Technology, Wuhan 430074, China
b Institute for Pattern Recognition and AI, State Key Laboratory of Image Processing and Intelligent Control, Huazhong University of Science and Technology, Wuhan 430074, China
c Key Lab of Information Network Security, Ministry of Public Security, the Third Research Institute of Ministry of Public Security, Shanghai 200031, China
Abstract:This paper proposes a novel blind image restoration method based on estimating the point-spread functions by using two real turbulence-degraded images as input. The non-negative constraint and the spatial correlation are transformed mathematically into the penalty terms and added to the objective function. An anisotropic and nonlinear regularization function is proposed to adequately punish the differences of the point spread functions (PSFs) in the process of optimization estimation. Some definitions of weighted second-order differences are given and a fast method to construct the matrix of second-order weighted gradient operator is derived. The PSF values can be quickly estimated. With the estimated PSFs, the true images can be recovered by non-blind restoration methods. Experiment results for the restoration of real turbulence-degraded images with complicated backgrounds support the effectiveness of this proposed method.
Keywords:Image restoration  Optimization estimation  Anisotropic regularization
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