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Universal Denoising Networks : A Novel CNN Architecture for Image Denoising

机译:通用降噪网络:一种用于图像降噪的新型CNN架构

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We design a novel network architecture for learning discriminative image models that are employed to efficiently tackle the problem of grayscale and color image denoising. Based on the proposed architecture, we introduce two different variants. The first network involves convolutional layers as a core component, while the second one relies instead on non-local filtering layers and thus it is able to exploit the inherent non-local self-similarity property of natural images. As opposed to most of the existing deep network approaches, which require the training of a specific model for each considered noise level, the proposed models are able to handle a wide range of noise levels using a single set of learned parameters, while they are very robust when the noise degrading the latent image does not match the statistics of the noise used during training. The latter argument is supported by results that we report on publicly available images corrupted by unknown noise and which we compare against solutions obtained by competing methods. At the same time the introduced networks achieve excellent results under additive white Gaussian noise (AWGN), which are comparable to those of the current state-of-the-art network, while they depend on a more shallow architecture with the number of trained parameters being one order of magnitude smaller. These properties make the proposed networks ideal candidates to serve as sub-solvers on restoration methods that deal with general inverse imaging problems such as deblurring, demosaicking, superresolution, etc.
机译:我们设计了一种新颖的网络体系结构,用于学习判别式图像模型,该模型可有效解决灰度和彩色图像降噪问题。基于提出的体系结构,我们介绍了两种不同的变体。第一个网络将卷积层作为核心组件,而第二个网络则依赖于非局部滤波层,因此它能够利用自然图像的固有非局部自相似性。与大多数现有的深层网络方法不同,后者需要针对每个考虑的噪声水平训练一个特定的模型,而提出的模型可以使用一组学习到的参数来处理各种噪声水平,而它们却非常当降噪潜像的噪声与训练期间使用的噪声统计信息不匹配时,鲁棒性增强。后一种观点得到了结果的支持,我们对因未知噪声而损坏的可公开获得的图像进行报告,并与通过竞争方法获得的解决方案进行比较。同时,引入的网络在加性高斯白噪声(AWGN)下取得了出色的结果,可与当前的最新网络相媲美,而它们依赖于带有更多训练参数的更浅层架构缩小一个数量级。这些特性使所提出的网络成为解决常规方法(如去模糊,去马赛克,超分辨率等)的逆方法的理想解决方案的理想解决方案。

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