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Image Super-Resolution With Cross-Scale Non-Local Attention and Exhaustive Self-Exemplars Mining

机译:跨尺度非局部注意和穷举自样本挖掘的图像超分辨率

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Deep convolution-based single image super-resolution (SISR) networks embrace the benefits of learning from large-scale external image resources for local recovery, yet most existing works have ignored the long-range feature-wise similarities in natural images. Some recent works have successfully leveraged this intrinsic feature correlation by exploring non-local attention modules. However, none of the current deep models have studied another inherent property of images: cross-scale feature correlation. In this paper, we propose the first Cross-Scale Non-Local (CS-NL) attention module with integration into a recurrent neural network. By combining the new CS-NL prior with local and in-scale non-local priors in a powerful recurrent fusion cell, we can find more cross-scale feature correlations within a single low-resolution (LR) image. The performance of SISR is significantly improved by exhaustively integrating all possible priors. Extensive experiments demonstrate the effectiveness of the proposed CS-NL module by setting new state-of-the-arts on multiple SISR benchmarks.
机译:基于深度卷积的单图像超分辨率(SISR)网络具有从大规模外部图像资源中进行局部恢复的学习优势,但大多数现有工作都忽略了自然图像中的远程特征相似性。最近的一些工作通过探索非本地关注模块成功地利用了这种内在特征相关性。但是,当前的任何深层模型都没有研究图像的另一种固有特性:跨尺度特征相关性。在本文中,我们提出了第一个跨尺度非本地(CS-NL)注意模块,该模块集成到了递归神经网络中。通过在强大的循环融合单元中将新的CS-NL先验与局部和尺度内非局部先验相结合,我们可以在单个低分辨率(LR)图像中找到更多的跨尺度特征相关性。通过详尽地集成所有可能的先验知识,可以显着提高SISR的性能。通过在多个SISR基准上设置新的最新技术,大量的实验证明了所提出的CS-NL模块的有效性。

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