论文标题

学习最大单调操作员以恢复图像

Learning Maximally Monotone Operators for Image Recovery

论文作者

Pesquet, Jean-Christophe, Repetti, Audrey, Terris, Matthieu, Wiaux, Yves

论文摘要

我们引入了一个新的范式来解决正则化变异问题。这些通常是为了解决信号和图像处理中遇到的不当反问题。传统上,该目标函数是通过将正则函数添加到数据拟合项中来定义的,该拟合项随后通过使用迭代优化算法将其最小化。最近,已经提出了一些作品来代替更复杂的DeNoiser与正规化相关的操作员。这些方法被称为插件(PNP)方法,表现出了出色的性能。尽管已经注意到,在DeOisers上的某些Lipschitz特性下,保证所得算法的收敛性,但对于表征渐近传递的溶液的表征知之甚少。在当前文章中,我们建议解决此限制。更具体地说,我们没有使用功能正则化,而是执行运算符正则化,其中最大单调操作员(MMO)以监督方式学习。该公式是灵活的,因为它允许通过广泛的变异不平等来表征溶液,并且包含凸的正规化作为特殊情况。从算法的角度来看,提出的方法包括通过神经网络(NN)代替MMO的分解。我们提出了一个通用近似定理,证明非专用NNS是用于分辨出广泛的MMO的合适模型。因此,提出的方法为分析一阶PNP算法的渐近行为提供了一个合理的理论框架。此外,我们提出了一种数值策略,以训练与MMO的分解相对应的NN。我们将方法应用于图像恢复问题,并在收敛和质量方面证明了其有效性。

We introduce a new paradigm for solving regularized variational problems. These are typically formulated to address ill-posed inverse problems encountered in signal and image processing. The objective function is traditionally defined by adding a regularization function to a data fit term, which is subsequently minimized by using iterative optimization algorithms. Recently, several works have proposed to replace the operator related to the regularization by a more sophisticated denoiser. These approaches, known as plug-and-play (PnP) methods, have shown excellent performance. Although it has been noticed that, under some Lipschitz properties on the denoisers, the convergence of the resulting algorithm is guaranteed, little is known about characterizing the asymptotically delivered solution. In the current article, we propose to address this limitation. More specifically, instead of employing a functional regularization, we perform an operator regularization, where a maximally monotone operator (MMO) is learned in a supervised manner. This formulation is flexible as it allows the solution to be characterized through a broad range of variational inequalities, and it includes convex regularizations as special cases. From an algorithmic standpoint, the proposed approach consists in replacing the resolvent of the MMO by a neural network (NN). We present a universal approximation theorem proving that nonexpansive NNs are suitable models for the resolvent of a wide class of MMOs. The proposed approach thus provides a sound theoretical framework for analyzing the asymptotic behavior of first-order PnP algorithms. In addition, we propose a numerical strategy to train NNs corresponding to resolvents of MMOs. We apply our approach to image restoration problems and demonstrate its validity in terms of both convergence and quality.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源