Accelerated Proximal Iterative re-Weighted 1 Alternating Minimization for Image Deblurring
Abstract
The quadratic penalty alternating minimization (AM) method is widely used for solving the convex 1 total variation (TV) image deblurring problem. However, quadratic penalty AM for solving the nonconvex nonsmooth p, 0 < p < 1 TV image deblurring problems is less studied. In this paper, we propose two algorithms, namely proximal iterative re-weighted 1 AM (PIRL1-AM) and its accelerated version, accelerated proximal iterative re-weighted 1 AM (APIRL1-AM) for solving the nonconvex nonsmooth p TV image deblurring problem. The proposed algorithms are derived from the proximal iterative re-weighted 1 (IRL1) algorithm and the proximal gradient algorithm. Numerical results show that PIRL1-AM is effective in retaining sharp edges in image deblurring while APIRL1-AM can further provide convergence speed up in terms of the number of algorithm iterations and computational time.
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