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Single Image Super-Resolution via Iterative Collaborative Representation

机译:通过迭代协作表示的单图像超分辨率

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We propose a new model called iterative collaborative representation (ICR) for image super-resolution (SR). Most of popular SR approaches extract low-resolution (LR) features from the given LR image directly to recover its corresponding high-resolution (HR) features. However, they neglect to utilize the reconstructed HR image for further image SR enhancement. Based on this observation, we extract features from the reconstructed HR image to progressively upscale LR image in an iterative way. In the learning phase, we use the reconstructed and the original HR images as inputs to train the mapping models. These mapping models are then used to upscale the original LR images. In the reconstruction phase, mapping models and LR features extracted from the LR and reconstructed image are then used to conduct image SR in each iteration. Experimental results on standard images demonstrate that our ICR obtains state-of-the-art SR performance quantitatively and visually, surpassing recently published leading SR methods.
机译:我们为图像超分辨率(SR)提出了一种称为迭代协作表示(ICR)的新模型。大多数流行的SR方法都直接从给定的LR图像中提取低分辨率(LR)特征,以恢复其相应的高分辨率(HR)特征。但是,他们忽略了将重建的HR图像用于进一步的图像SR增强。基于此观察,我们以迭代方式从重建的HR图像中提取特征,以逐步放大LR图像。在学习阶段,我们将重建后的原始HR图像用作输入来训练映射模型。这些映射模型然后用于放大原始LR图像。在重建阶段,然后从LR和重建图像中提取映射模型和LR特征,然后在每次迭代中进行图像SR。在标准图像上的实验结果表明,我们的ICR在数量上和视觉上都获得了最先进的SR性能,超过了最近发布的领先SR方法。

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