论文标题
弱纹理信息图指导图像超分辨率具有深层残留网络
Weak Texture Information Map Guided Image Super-resolution with Deep Residual Networks
论文作者
论文摘要
单图像超分辨率(SISR)是一个图像处理任务,从低分辨率(LR)图像获得高分辨率(HR)图像。最近,由于特征提取的能力,一系列深度学习方法为SISR带来了重要的关键改善。但是,我们观察到,无论网络设计的深度如何,它们通常都没有良好的概括能力,这导致了这样一个事实,即几乎所有现有的SR方法在恢复弱质地细节的恢复方面的性能都很差。为了解决这些问题,我们提出了一个弱纹理信息图指导图像超分辨率,并具有深层残留网络。它包含三个子网络,一个主要网络,它提取主要功能并融合了弱纹理细节,另外两个辅助网络提取了主要网络中的弱纹理细节。网络的两个部分合作,辅助网络预测并将周的质地信息整合到主网络中,这有利于主要网络学习更多不明显的细节。实验结果表明,我们的方法的执行能力实现了最新的定量。具体而言,我们方法的图像超分辨率结果拥有更多弱纹理细节。
Single image super-resolution (SISR) is an image processing task which obtains high-resolution (HR) image from a low-resolution (LR) image. Recently, due to the capability in feature extraction, a series of deep learning methods have brought important crucial improvement for SISR. However, we observe that no matter how deeper the networks are designed, they usually do not have good generalization ability, which leads to the fact that almost all of existing SR methods have poor performances on restoration of the weak texture details. To solve these problems, we propose a weak texture information map guided image super-resolution with deep residual networks. It contains three sub-networks, one main network which extracts the main features and fuses weak texture details, another two auxiliary networks extract the weak texture details fallen in the main network. Two part of networks work cooperatively, the auxiliary networks predict and integrates week texture information into the main network, which is conducive to the main network learning more inconspicuous details. Experiments results demonstrate that our method's performs achieve the state-of-the-art quantitatively. Specifically, the image super-resolution results of our method own more weak texture details.