A Weberized Total Variation Regularization-Based Image Multiplicative Noise Removal Algorithm
A Weberized Total Variation Regularization-Based Image Multiplicative Noise Removal Algorithm
Blog Article
Multiplicative noise removal is of momentous significance in coherent imaging systems and markbroyard.com various image processing applications.This paper proposes a new nonconvex variational model for multiplicative noise removal under the Weberized total variation (TV) regularization framework.Then, we propose and investigate another surrogate strictly convex objective function for Weberized TV regularization-based multiplicative noise removal model.
Finally, we propose and design a novel way of fast alternating optimizing 5326058hx algorithm which contains three subminimizing parts and each of them permits a closed-form solution.Our experimental results show that our algorithm is effective and efficient to filter out multiplicative noise while well preserving the feature details.