Paper ID: 2502.07602 • Published Feb 11, 2025
An Improved Optimal Proximal Gradient Algorithm for Non-Blind Image Deblurring
Qingsong Wang, Shengze Xu, Xiaojiao Tong, Tieyong Zeng
TL;DR
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Image deblurring remains a central research area within image processing,
critical for its role in enhancing image quality and facilitating clearer
visual representations across diverse applications. This paper tackles the
optimization problem of image deblurring, assuming a known blurring kernel. We
introduce an improved optimal proximal gradient algorithm (IOptISTA), which
builds upon the optimal gradient method and a weighting matrix, to efficiently
address the non-blind image deblurring problem. Based on two regularization
cases, namely the l_1 norm and total variation norm, we perform numerical
experiments to assess the performance of our proposed algorithm. The results
indicate that our algorithm yields enhanced PSNR and SSIM values, as well as a
reduced tolerance, compared to existing methods.