SR_Framework A generic super-resolution framework which implements the following networks (Updating...) DLSR [Differentiable architecture search] RFDN [AIM20 Champion] LatticeNet [ECCV2020] IMDN [ACM MM2019] SRFBN [CVPR2019] IDN [CVPR2018] CARN [ECCV2018] RCAN [ECCV2018] MemNet [ICCV2017] EDSR [CVPR2017] DRRN [CVPR2017] LapSRN [CVPR2017] DRCN [CVPR2016] VDSR [CVPR2016] FSRCNN [ECCV 2016] Implement some useful functions for article figures. Like the following: 1. generate_best: Automatically compare your method with other methods and visualize the best patches. 2. Frequency_analysis: Convert an image to 1-D spectral densities. 3. relation: Explore relations in fuse stage.(eg. torch.cat([t1, t2, t3, c4], dim=1) and then fuse them with 1x1 convolution) 4. feature_map: Visualize feature map.(average feature maps along channel axis)