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💻 How to Train Real-ESRGAN
The training codes have been released.
Note that the codes have a lot of refactoring. So there may be some bugs/performance drops. Welcome to report bugs/issues.
Overview
The training has been divided into two stages. These two stages have the same data synthesis process and training pipeline, except for the loss functions. Specifically,
- We first train Real-ESRNet with L1 loss from the pre-trained model ESRGAN.
- We then use the trained Real-ESRNet model as an initialization of the generator, and train the Real-ESRGAN with a combination of L1 loss, perceptual loss and GAN loss.
Dataset Preparation
We use DF2K (DIV2K and Flickr2K) + OST datasets for our training. Only HR images are required.
You can download from :
- DIV2K: http://data.vision.ee.ethz.ch/cvl/DIV2K/DIV2K_train_HR.zip
- Flickr2K: https://cv.snu.ac.kr/research/EDSR/Flickr2K.tar
- OST: https://openmmlab.oss-cn-hangzhou.aliyuncs.com/datasets/OST_dataset.zip
For the DF2K dataset, we use a multi-scale strategy, i.e., we downsample HR images to obtain several Ground-Truth images with different scales.
We then crop DF2K images into sub-images for faster IO and processing.
You need to prepare a txt file containing the image paths. The following are some examples in meta_info_DF2Kmultiscale+OST_sub.txt (As different users may have different sub-images partitions, this file is not suitable for your purpose and you need to prepare your own txt file):
DF2K_HR_sub/000001_s001.png
DF2K_HR_sub/000001_s002.png
DF2K_HR_sub/000001_s003.png
...
Train Real-ESRNet
- Download pre-trained model ESRGAN into
experiments/pretrained_models.wget https://github.com/xinntao/Real-ESRGAN/releases/download/v0.1.1/ESRGAN_SRx4_DF2KOST_official-ff704c30.pth -P experiments/pretrained_models - Modify the content in the option file
options/train_realesrnet_x4plus.ymlaccordingly:train: name: DF2K+OST type: RealESRGANDataset dataroot_gt: datasets/DF2K # modify to the root path of your folder meta_info: realesrgan/meta_info/meta_info_DF2Kmultiscale+OST_sub.txt # modify to your own generate meta info txt io_backend: type: disk - If you want to perform validation during training, uncomment those lines and modify accordingly:
# Uncomment these for validation # val: # name: validation # type: PairedImageDataset # dataroot_gt: path_to_gt # dataroot_lq: path_to_lq # io_backend: # type: disk ... # Uncomment these for validation # validation settings # val: # val_freq: !!float 5e3 # save_img: True # metrics: # psnr: # metric name, can be arbitrary # type: calculate_psnr # crop_border: 4 # test_y_channel: false - Before the formal training, you may run in the
--debugmode to see whether everything is OK. We use four GPUs for training:CUDA_VISIBLE_DEVICES=0,1,2,3 \ python -m torch.distributed.launch --nproc_per_node=4 --master_port=4321 realesrgan/train.py -opt options/train_realesrnet_x4plus.yml --launcher pytorch --debug - The formal training. We use four GPUs for training. We use the
--auto_resumeargument to automatically resume the training if necessary.CUDA_VISIBLE_DEVICES=0,1,2,3 \ python -m torch.distributed.launch --nproc_per_node=4 --master_port=4321 realesrgan/train.py -opt options/train_realesrnet_x4plus.yml --launcher pytorch --auto_resume
Train Real-ESRGAN
- After the training of Real-ESRNet, you now have the file
experiments/train_RealESRNetx4plus_1000k_B12G4_fromESRGAN/model/net_g_1000000.pth. If you need to specify the pre-trained path to other files, modify thepretrain_network_gvalue in the option filetrain_realesrgan_x4plus.yml. - Modify the option file
train_realesrgan_x4plus.ymlaccordingly. Most modifications are similar to those listed above. - Before the formal training, you may run in the
--debugmode to see whether everything is OK. We use four GPUs for training:CUDA_VISIBLE_DEVICES=0,1,2,3 \ python -m torch.distributed.launch --nproc_per_node=4 --master_port=4321 realesrgan/train.py -opt options/train_realesrgan_x4plus.yml --launcher pytorch --debug - The formal training. We use four GPUs for training. We use the
--auto_resumeargument to automatically resume the training if necessary.CUDA_VISIBLE_DEVICES=0,1,2,3 \ python -m torch.distributed.launch --nproc_per_node=4 --master_port=4321 realesrgan/train.py -opt options/train_realesrgan_x4plus.yml --launcher pytorch --auto_resume