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A Generalized Accelerated Proximal Gradient Approach for Total-Variation-Based Image Restoration

机译:基于全变分的图像复原的通用加速近梯度方法

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摘要

This paper proposes a generalized accelerated proximal gradient (GAPG) approach for solving total variation (TV)-based image restoration problems. The GAPG algorithm generalizes the original APG algorithm by replacing the Lipschitz constant with an appropriate positive-definite matrix, resulting in faster convergence. For TV-based image restoration problems, we further introduce two auxiliary variables that approximate the partial derivatives. Constraints on the variables can easily be imposed without modifying the algorithm much, and the TV regularization can be either isotropic or anisotropic. As compared with the recently developed APG-based methods for TV-based image restoration, i.e., monotone version of the two-step iterative shrinkage/thresholding algorithm (MTwIST) and monotone version of the fast IST algorithm (MFISTA), our GAPG is much simpler as it does not require to solve an image denoising subproblem. Moreover, the convergence rate of $O(k^{-2})$ is maintained by our GAPG, where $k$ is the number of iterations; the cost of each iteration in GAPG is also lower. As a result, in our experiments, our GAPG approach can be much faster than MTwIST and MFISTA. The experiments also verify that our GAPG converges faster than the original APG and MTwIST when they solve identical problems.
机译:本文提出了一种通用加速近端梯度(GAPG)方法来解决基于总变化(TV)的图像恢复问题。 GAPG算法通过将Lipschitz常数替换为适当的正定矩阵来推广原始APG算法,从而加快收敛速度​​。对于基于电视的图像恢复问题,我们进一步介绍了两个近似于偏导数的辅助变量。可以轻松地对变量施加约束,而无需大量修改算法,并且TV正则化可以是各向同性或各向异性的。与最近开发的基于APG的基于TV的图像恢复方法(即,两步迭代收缩/阈值算法的单调版本(MTwIST)和快速IST算法的单调版本(MFISTA))相比,我们的GAPG非常实用更简单,因为它不需要解决图像去噪子问题。此外,我们的GAPG保持$ O(k ^ {-2})$的收敛速度,其中$ k $是迭代次数; GAPG中每次迭代的成本也较低。结果,在我们的实验中,我们的GAPG方法可能比MTwIST和MFISTA快得多。实验还证明,当我们的GAPG解决相同的问题时,它们的收敛速度比原始的APG和MTwIST快。

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