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Fast Single-Image Super-Resolution via Deep Network With Component Learning

机译:通过具有组件学习的深网络快速单图像超分辨率

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Driven by the spectacular success of deep learning, several advanced models based on neural networks have recently been proposed for single-image super-resolution, incrementally revealing their superiority over their alternatives. In this paper, we pursue this latest line of research and present an improved network structure by taking advantage of the proposed component learning. The core idea and difference of this learning strategy are to use the residual extracted from the input to predict its counterpart in the corresponding output. To this end, a global decomposition procedure is designed on the basis of convolutional sparse coding and performed on the input for extracting the low-resolution (LR) residual component from it. Owing to the properties of this decomposition, the represented residual component still stays in the LR space so that the subsequent part is capable of operating it economically in terms of computational complexity. Thorough experimental results demonstrate the merit and effectiveness of the proposed component learning strategy, and our trained model outperforms many state-of-the-art methods in terms of both speed and reconstruction quality.
机译:深受深度学习的壮观成功的推动,最近已经提出了基于神经网络的几个先进模型,用于单图像超分辨率,逐步揭示其优越性的替代方案。在本文中,我们通过利用所提出的组件学习来追求这种最新的研究和提高网络结构。这种学习策略的核心思想和差异是使用从输入中提取的残余提取来预测其对应于相应的输出。为此,在卷积稀疏编码的基础上设计全局分解过程,并对从中提取低分辨率(LR)残差组分的输入进行设计。由于该分解的性质,所代表的残余分量仍然保持在LR空间中,使得随后的部分能够在计算复杂性方面经济地进行操作。彻底的实验结果表明,拟议的组件学习策略的优点和有效性,我们培训的模型在速度和重建质量方面优于许多最先进的方法。

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