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Unified Dynamic Convolutional Network for Super-Resolution With Variational Degradations

机译:变分退化的超高分辨率统一动态卷积网络

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Deep Convolutional Neural Networks (CNNs) have achieved remarkable results on Single Image Super-Resolution (SISR). Despite considering only a single degradation, recent studies also include multiple degrading effects to better reflect real-world cases. However, most of the works assume a fixed combination of degrading effects, or even train an individual network for different combinations. Instead, a more practical approach is to train a single network for wide-ranging and variational degradations. To fulfill this requirement, this paper proposes a unified network to accommodate the variations from inter-image (cross-image variations) and intra-image (spatial variations). Different from the existing works, we incorporate dynamic convolution which is a far more flexible alternative to handle different variations. In SISR with non-blind setting, our Unified Dynamic Convolutional Network for Variational Degradations (UDVD) is evaluated on both synthetic and real images with an extensive set of variations. The qualitative results demonstrate the effectiveness of UDVD over various existing works. Extensive experiments show that our UDVD achieves favorable or comparable performance on both synthetic and real images.
机译:深度卷积神经网络(CNN)在单图像超分辨率(SISR)上取得了显著成果。尽管仅考虑了一次降级,但最近的研究还包括多种降级效果,以更好地反映实际情况。但是,大多数作品都采用固定的降级效果组合,甚至为不同的组合训练单个网络。取而代之的是,一种更实用的方法是训练单个网络以应对范围广泛且变化多端的性能下降。为了满足这一要求,本文提出了一个统一的网络来适应图像间(跨图像变化)和图像内(空间变化)的变化。与现有作品不同,我们采用了动态卷积,这是处理不同变化的灵活得多的替代方法。在具有非盲设置的SISR中,我们对变化量较大的合成图像和真实图像均进行了统一的用于变差降级的动态卷积网络(UDVD)的评估。定性结果证明了UDVD在各种现有作品上的有效性。大量的实验表明,我们的UDVD在合成图像和真实图像上均具有令人满意或相当的性能。

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