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A Novel Super-resolution Method Based on Patch Reconstruction with Simk Clustering and Nonlinear Mapping

机译:一种基于Simk聚类和非线性映射的补丁重建的新型超分辨率方法

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In this paper, we propose a patch-wise super-resolution (SR) method that combines an external-sample classification tree and a nonlinear-mapping learning stage to simultaneously guarantees reconstruction quality and speed at the stage of patch representation and mapping. We use the low-resolution (LR) to high-resolution (HR) mapping kernel of each patch-pair sample (called SIMK) to complete classification by binary tree branching and provide reasonable training sets for mapping-learning. Then a high accuracy but low cost lightweight network is learned for each tree node to choose the reasonable branch path for the testing LR patches. In the mapping-learning stage, the nonlinear mapping for each class is represented as a full-connected network, which provides satisfying generalization ability for LR patch reconstruction. Comparing with state-of-the-art methods, our approach achieves real-time (>24fps) SR of realistic vision and high quality for different upscaling factors.
机译:在本文中,我们提出了一种解决外部样本分类树和非线性映射学习阶段的补丁方面的超分辨率(SR)方法,同时保证修补程序表示和映射阶段的重建质量和速度。我们将低分辨率(LR)与每个补丁样本(称为SIMK)的高分辨率(HR)映射内核进行映射,以通过二进制树分支完成分类,并为映射学习提供合理的训练集。然后,为每个树节点学习高精度但低成本的轻量级网络,为测试LR补丁选择合理的分支路径。在映射学习阶段,每个类的非线性映射表示为全连接网络,其提供了满足LR补丁重建的泛化能力。与最先进的方法相比,我们的方法实现了实际视觉和高质量的实时(> 24Fps),不同的升级因素。

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