基于对偶回归网络的图像超分辨率盲重建

Hongpeng Tian, ShengZhou Jiang
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引用次数: 0

摘要

现有的基于深度学习的超分辨率(SR)重建算法在已知退化的图像上取得了显著的性能。大多数退化模型在面对真实场景图像的退化模型偏差时存在自适应问题,效果不佳。因此,本文提出了一种基于对偶回归的盲图像超分辨率重建算法,旨在解决超分辨率网络在真实场景中表现不佳的问题。首先利用闭环网络约束映射空间,寻找最优重构函数,提高网络重构性能;其次,在特征提取的残差块中引入注意机制,扩大特征图的接受域,提高特征的可重用性,加强高频信息的重构;最后,频域模糊核映射估计下采样核重构低分辨率图像,自适应提取特征表达式,增强纹理细节恢复能力,更好地重建真实图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Blind image super-resolution reconstruction based on dual regression network
Existing deep learning-based Super Resolution (SR) reconstruction algorithms achieve remarkable performance on images with known degradation. Most of the degradation models exists problems in self-adaptations when facing with the deviation of the degradation model of the image of the real scene, and the effect is not good. Therefore, this paper proposes a blind image super-resolution reconstruction algorithm based on dual regression, which aims to solve the problem of poor performance of super-resolution networks in real scenes. Firstly, the closed-loop network is used to constrain the mapping space, and the optimal reconstruction function is found to improve the network reconstruction performance. Secondly, the attention mechanism is adopted into the residual block of feature extraction to expand the receptive field of the feature map, improve the reuse of features, and strengthen the reconstruction of high-frequency information. Finally, the frequency-domain blur kernel map estimates the down sampling kernel and reconstructs the low-resolution image, adaptively extracts the feature expression, enhances the ability to restore texture details, and reconstructs the real-world image better.
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