WPPNets and WPPFlows: The Power of Wasserstein Patch Priors for Superresolution

Fabian Altekrüger, J. Hertrich
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引用次数: 7

Abstract

Exploiting image patches instead of whole images have proved to be a powerful approach to tackle various problems in image processing. Recently, Wasserstein patch priors (WPP), which are based on the comparison of the patch distributions of the unknown image and a reference image, were successfully used as data-driven regularizers in the variational formulation of superresolution. However, for each input image, this approach requires the solution of a non-convex minimization problem which is computationally costly. In this paper, we propose to learn two kind of neural networks in an unsupervised way based on WPP loss functions. First, we show how convolutional neural networks (CNNs) can be incorporated. Once the network, called WPPNet, is learned, it can be very efficiently applied to any input image. Second, we incorporate conditional normalizing flows to provide a tool for uncertainty quantification. Numerical examples demonstrate the very good performance of WPPNets for superresolution in various image classes even if the forward operator is known only approximately.
WPPNets和WPPFlows: Wasserstein Patch prior的超分辨率能力
利用图像块代替整个图像已被证明是解决图像处理中各种问题的有效方法。近年来,基于比较未知图像和参考图像的斑块分布的Wasserstein patch prior (WPP)被成功地用于超分辨率变分公式的数据驱动正则化。然而,对于每个输入图像,这种方法需要解决一个非凸最小化问题,这在计算上是昂贵的。本文提出了一种基于WPP损失函数的无监督学习两类神经网络的方法。首先,我们展示了卷积神经网络(cnn)是如何被整合的。一旦被称为WPPNet的网络被学习,它就可以非常有效地应用于任何输入图像。其次,我们结合条件规范化流来提供不确定性量化的工具。数值算例表明,即使前向算子仅近似已知,WPPNets在各种图像类别中的超分辨性能也很好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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