Skip to content
forked from Ast-363/CRAN

Unofficial pytorch implementation of the paper "Context Reasoning Attention Network for Image Super-Resolution (ICCV 2021)"

Notifications You must be signed in to change notification settings

yuqing-liu-dut/CRAN

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

14 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

CRAN

Unofficial pytorch implementation of the paper "Context Reasoning Attention Network for Image Super-Resolution (ICCV 2021)"

This code doesn't exactly match what the paper describes.

  • I delete the module "CDRR" (Section 3.2) in the code because of low training speed and performance drop (maybe I wrongly make the code for "CDRR")
  • If you want to use "CDRR", just uncomment the remarks in "common.py" capture capture1

The environmental settings are described below. (I cannot gaurantee if it works on other environments)

  • Pytorch=1.7.1+cu110
  • numpy=1.18.3
  • cv2=4.2.0
  • tqdm=4.45.0

Train

First, you need to download weights of ResNet50 pretrained on ImageNet database.

Second, you need to download the DF2K dataset.

캡처

  • Set the database path in "./opt/option.py" (It is represented as "dir_data")

After those settings, you can run the train code by running "train.py"

  • python3 train.py --gpu_id 0 (execution code)
  • This code works on single GPU. If you want to train this code in muti-gpu, you need to change this code
  • Options are all included in "./opt/option.py". So you should change the variable in "./opt/option.py"

Inference

First, you need to specify variables in "./opt/option.py"

  • dir_test: root folder of test images
  • weights: checkpoint file (trained on DF2K dataset)
  • results: inference results will be saved on this folder

After those settings, you can run the inference code by running "inference.py"

  • python3 inference.py --gpu_id 0 (execution code)

Acknolwdgements

We refer to repos below to implement this code.

About

Unofficial pytorch implementation of the paper "Context Reasoning Attention Network for Image Super-Resolution (ICCV 2021)"

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 100.0%