Convolutional neural networks based single-image super-resolution (SISR) has made great progress in recent years. However, it is difficult to apply these methods to real-world scenarios due to the computational and memory cost. Meanwhile, how to take full advantage of the intermediate features under the constraints of limited parameters and calculations is also a huge challenge. To alleviate these issues, we propose a lightweight yet efficient Feature Distillation Interaction Weighted Network (FDIWN). Specifically, FDIWN utilizes a series of specially designed Feature Shuffle Weighted Groups (FSWG) as the backbone, and several novel mutual Wide-residual Distillation Interaction Blocks (WDIB) form an FSWG. In addition, Wide Identical Residual Weighting (WIRW) units and Wide Convolutional Residual Weighting (WCRW) units are introduced into WDIB for better feature distillation. Moreover, a Wide-Residual Distillation Connection (WRDC) framework and a Self-Calibration Fusion (SCF) unit are proposed to interact features with different scales more flexibly and efficiently.Extensive experiments show that our FDIWN is superior to other models to strike a good balance between model performance and efficiency. The code is available at https://github.com/IVIPLab/FDIWN.
翻译:近年来,基于单一图像超分辨率(SISR)的革命性神经网络取得了巨大进展,但由于计算和记忆成本,很难将这些方法应用于现实世界情景。与此同时,如何在有限参数和计算的限制下充分利用中间特征也是一个巨大的挑战。为了缓解这些问题,我们提议建立一个轻量而高效的地球蒸馏互动重力网络(FDIWN)。具体地说,FDIWN利用一系列专门设计的特制减肥小组(FSWG)作为骨干,以及几个新型的宽度蒸馏互动区(WDIB)组成FSWG。此外,在有限的参数和计算的限制下,如何充分利用中间特征。我们向WDIBB引入了广度而高效的增肥互动网络(WCRWN)。此外,一个广度再生化框架和一个自化组(SFSFCWG)作为主干力组合(SFCWG)作为主干力,并提出了几个新型的宽度蒸馏蒸馏互动互动互动系统(WIBBB)组成了一个新的广度和高效的模型。MFDI实验显示,在更灵活、更高效、更高效的进度上进行其他的模拟的模型。