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A Fast Alternating Minimization Algorithm for Nonlocal Vectorial Total Variational Multichannel Image Denoising

机译:非局部矢量总变分数多通道图像去噪的快速交替最小化算法

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摘要

The variational models with nonlocal regularization offer superior image restoration quality over traditional method. But the processing speed remains a bottleneck due to the calculation quantity brought by the recent iterative algorithms. In this paper, a fast algorithm is proposed to restore the multichannel image in the presence of additive Gaussian noise by minimizing an energy function consisting of an l2-norm fidelity term and a nonlocal vectorial total variational regularization term. This algorithm is based on the variable splitting and penalty techniques in optimization. Following our previous work on the proof of the existence and the uniqueness of the solution of the model, we establish and prove the convergence properties of this algorithm, which are the finite convergence for some variables and the q-linear convergence for the rest. Experiments show that this model has a fabulous texture-preserving property in restoring color images. Both the theoretical derivation of the computation complexity analysis and the experimental results show that the proposed algorithm performs favorably in comparison to the widely used fixed point algorithm.
机译:具有非局部正则化的变分模型在传统方法中提供优异的图像恢复质量。但由于最近迭代算法带来的计算量,处理速度仍然是瓶颈。在本文中,提出了一种快速算法,通过最小化由L2-NOM待保真术语和非局部矢量总分析术语组成的能量函数来恢复加性高斯噪声的存在。该算法基于优化中的可变分裂和罚款技术。在我们以前的工作证明和模型解决方案的独特性的工作之后,我们建立并证明了该算法的收敛性,这是一些变量的有限收敛和其余的Q线性收敛。实验表明,该模型具有恢复彩色图像的神话纹理保存性。计算复杂性分析的理论衍生和实验结果表明,与广泛使用的固定点算法相比,该算法的算法有利地执行。

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