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New Techniques for Preserving Global Structure and Denoising with Low Information Loss in Single-Image Super-Resolution

机译:以单图像超分辨率在低信息损失中保留全球结构和去噪的新技术

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This work identifies and addresses two important technical challenges in single-image super-resolution: (1) how to upsample an image without magnifying noise and (2) how to preserve large scale structure when upsampling. We summarize the techniques we developed for our second place entry in Track 1 (Bicubic Downsampling), seventh place entry in Track 2 (Realistic Adverse Conditions), and seventh place entry in Track 3 (Realistic difficult) in the 2018 NTIRE Super-Resolution Challenge. Furthermore, we present new neural network architectures that specifically address the two challenges listed above: denoising and preservation of large-scale structure.
机译:这项工作识别并解决了单图像超分辨率中的两个重要技术挑战:(1)如何在没有放大噪声的情况下upsamplumple,(2)如何在上采样时保持大规模结构。我们总结了我们在轨道1(双方倒下采样)中为我们的第二位条目开发的技术,第七次播放2(现实不利条件)和第七个地方入口在2018年的赛道3(现实困难)中的第七名(现实困难) 。此外,我们提出了新的神经网络架构,具体解决了上面列出的两个挑战:去噪和保存大规模结构。

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