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Convex Image Denoising via Non-convex Regularization with Parameter Selection

机译:通过具有参数选择的非凸正则化处理的凸图像去噪

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摘要

We introduce a convex non-convex (CNC) denoising variational model for restoring images corrupted by additive white Gaussian noise. We propose the use of parameterized non-convex regularizers to effectively induce sparsity of the gradient magnitudes in the solution, while maintaining strict convexity of the total cost functional. Some widely used non-convex regularization functions are evaluated and a new one is analyzed which allows for better restorations. An efficient minimization algorithm based on the alternating direction method of multipliers (ADMM) strategy is proposed for simultaneously restoring the image and automatically selecting the regularization parameter by exploiting the discrepancy principle. Theoretical convexity conditions for both the proposed CNC variational model and the optimization sub-problems arising in the ADMM-based procedure are provided which guarantee convergence to a unique global minimizer. Numerical examples are presented which indicate how the proposed approach is particularly effective and well suited for images characterized by moderately sparse gradients.
机译:我们引入了凸非凸(CNC)去噪变分模型,用于恢复由加性高斯白噪声破坏的图像。我们建议使用参数化非凸正则化器来有效地诱导解决方案中梯度量的稀疏性,同时保持总成本函数的严格凸性。对一些广泛使用的非凸正则化函数进行了评估,并分析了一个新函数,可以更好地进行还原。提出了一种基于乘积交替方向法(ADMM)的高效最小化算法,该算法可以利用差异原理同时还原图像并自动选择正则化参数。提供了建议的CNC变分模型和基于ADMM的过程中出现的优化子问题的理论凸条件,这些条件保证了向唯一全局最小化器的收敛。给出了数值示例,表明所提出的方法如何特别有效并且非常适合以中等稀疏梯度为特征的图像。

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