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Shearlet-TGV based model for restoring noisy images corrupted by Cauchy noise

机译:基于Shearlet-TGV的模型,用于恢复Cauchy噪声损坏的噪声图像

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摘要

By combining with the shearlet transform and the second-order total generalized variation (TGV) regularization, a strictly convex shearlet-TGV based model is proposed for restoring images corrupted by Cauchy noise. The shearlet-TGV based model can be taken as a minimization problem for which the objective function is composed of a second-order TGV regularization term, a l1-norm to the shearlet transform, a data fidelity term to the Cauchy noise, and a quadratic penalty term to guarantee the uniqueness of the solution. Computationally, the shearlet-TGV based model is transformed into a minimax problem by using the dual technique of optimization. Then, a high efficient Chambolle-Pock's first-order primal-dual algorithm is developed to solve the transformed minimax problem. At last, compared with several existing state-of-the-art methods, experimental results demonstrate the effectiveness of our proposed method, in terms of the signal to noise ratio, the peak signal to noise ratio, the mean square error and the structural similarity index.
机译:通过与Shearlet变换和二阶总体广义变化(TGV)正规组合,提出了一种基于严格凸的Shearlet-TGV的模型,用于恢复被Cauchy噪声损坏的图像。基于Shearlet-TGV基于的模型作为最小化问题,目标函数由二阶TGV正则化术语组成,对Shearlet变换的L1-Norm,数据保真度术语与Cauchy噪声相比,以及二次罚款术语保证解决方案的独特性。计算地,通过使用双向优化技术将基于Shearlet-TGV的模型转换为极其问题。然后,开发了一种高效的槽孔的一阶标准 - 双重算法来解决变化的最小值问题。最后,与几种现有的最先进方法相比,实验结果表明了我们所提出的方法的有效性,就信号到噪声比而言,峰值信号到噪声比,均方误差和结构相似度指数。

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