# :computer: How to Train/Finetune Real-ESRGAN - [Train Real-ESRGAN](#train-real-esrgan) - [Overview](#overview) - [Dataset Preparation](#dataset-preparation) - [Train Real-ESRNet](#Train-Real-ESRNet) - [Train Real-ESRGAN](#Train-Real-ESRGAN) - [Finetune Real-ESRGAN on your own dataset](#Finetune-Real-ESRGAN-on-your-own-dataset) - [Generate degraded images on the fly](#Generate-degraded-images-on-the-fly) - [Use paired training data](#use-your-own-paired-data) [English](Training.md) **|** [简体中文](Training_CN.md) ## Train Real-ESRGAN ### 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, 1. We first train Real-ESRNet with L1 loss from the pre-trained model ESRGAN. 1. 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 : 1. DIV2K: http://data.vision.ee.ethz.ch/cvl/DIV2K/DIV2K_train_HR.zip 2. Flickr2K: https://cv.snu.ac.kr/research/EDSR/Flickr2K.tar 3. OST: https://openmmlab.oss-cn-hangzhou.aliyuncs.com/datasets/OST_dataset.zip Here are steps for data preparation. #### Step 1: [Optional] Generate multi-scale images 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.
You can use the [scripts/generate_multiscale_DF2K.py](scripts/generate_multiscale_DF2K.py) script to generate multi-scale images.
Note that this step can be omitted if you just want to have a fast try. ```bash python scripts/generate_multiscale_DF2K.py --input datasets/DF2K/DF2K_HR --output datasets/DF2K/DF2K_multiscale ``` #### Step 2: [Optional] Crop to sub-images We then crop DF2K images into sub-images for faster IO and processing.
This step is optional if your IO is enough or your disk space is limited. You can use the [scripts/extract_subimages.py](scripts/extract_subimages.py) script. Here is the example: ```bash python scripts/extract_subimages.py --input datasets/DF2K/DF2K_multiscale --output datasets/DF2K/DF2K_multiscale_sub --crop_size 400 --step 200 ``` #### Step 3: Prepare a txt for meta information 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): ```txt DF2K_HR_sub/000001_s001.png DF2K_HR_sub/000001_s002.png DF2K_HR_sub/000001_s003.png ... ``` You can use the [scripts/generate_meta_info.py](scripts/generate_meta_info.py) script to generate the txt file.
You can merge several folders into one meta_info txt. Here is the example: ```bash python scripts/generate_meta_info.py --input datasets/DF2K/DF2K_HR datasets/DF2K/DF2K_multiscale --root datasets/DF2K datasets/DF2K --meta_info datasets/DF2K/meta_info/meta_info_DF2Kmultiscale.txt ``` ### Train Real-ESRNet 1. Download pre-trained model [ESRGAN](https://github.com/xinntao/Real-ESRGAN/releases/download/v0.1.1/ESRGAN_SRx4_DF2KOST_official-ff704c30.pth) into `experiments/pretrained_models`. ```bash wget https://github.com/xinntao/Real-ESRGAN/releases/download/v0.1.1/ESRGAN_SRx4_DF2KOST_official-ff704c30.pth -P experiments/pretrained_models ``` 1. Modify the content in the option file `options/train_realesrnet_x4plus.yml` accordingly: ```yml 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 ``` 1. If you want to perform validation during training, uncomment those lines and modify accordingly: ```yml # 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 ``` 1. Before the formal training, you may run in the `--debug` mode to see whether everything is OK. We use four GPUs for training: ```bash 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 ``` Train with **a single GPU** in the *debug* mode: ```bash python realesrgan/train.py -opt options/train_realesrnet_x4plus.yml --debug ``` 1. The formal training. We use four GPUs for training. We use the `--auto_resume` argument to automatically resume the training if necessary. ```bash 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 with **a single GPU**: ```bash python realesrgan/train.py -opt options/train_realesrnet_x4plus.yml --auto_resume ``` ### Train Real-ESRGAN 1. 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 the `pretrain_network_g` value in the option file `train_realesrgan_x4plus.yml`. 1. Modify the option file `train_realesrgan_x4plus.yml` accordingly. Most modifications are similar to those listed above. 1. Before the formal training, you may run in the `--debug` mode to see whether everything is OK. We use four GPUs for training: ```bash 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 ``` Train with **a single GPU** in the *debug* mode: ```bash python realesrgan/train.py -opt options/train_realesrgan_x4plus.yml --debug ``` 1. The formal training. We use four GPUs for training. We use the `--auto_resume` argument to automatically resume the training if necessary. ```bash 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 ``` Train with **a single GPU**: ```bash python realesrgan/train.py -opt options/train_realesrgan_x4plus.yml --auto_resume ``` ## Finetune Real-ESRGAN on your own dataset You can finetune Real-ESRGAN on your own dataset. Typically, the fine-tuning process can be divided into two cases: 1. [Generate degraded images on the fly](#Generate-degraded-images-on-the-fly) 1. [Use your own **paired** data](#Use-paired-training-data) ### Generate degraded images on the fly Only high-resolution images are required. The low-quality images are generated with the degradation process described in Real-ESRGAN during training. **1. Prepare dataset** See [this section](#dataset-preparation) for more details. **2. Download pre-trained models** Download pre-trained models into `experiments/pretrained_models`. - *RealESRGAN_x4plus.pth*: ```bash wget https://github.com/xinntao/Real-ESRGAN/releases/download/v0.1.0/RealESRGAN_x4plus.pth -P experiments/pretrained_models ``` - *RealESRGAN_x4plus_netD.pth*: ```bash wget https://github.com/xinntao/Real-ESRGAN/releases/download/v0.2.2.3/RealESRGAN_x4plus_netD.pth -P experiments/pretrained_models ``` **3. Finetune** Modify [options/finetune_realesrgan_x4plus.yml](options/finetune_realesrgan_x4plus.yml) accordingly, especially the `datasets` part: ```yml 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 ``` We use four GPUs for training. We use the `--auto_resume` argument to automatically resume the training if necessary. ```bash CUDA_VISIBLE_DEVICES=0,1,2,3 \ python -m torch.distributed.launch --nproc_per_node=4 --master_port=4321 realesrgan/train.py -opt options/finetune_realesrgan_x4plus.yml --launcher pytorch --auto_resume ``` Finetune with **a single GPU**: ```bash python realesrgan/train.py -opt options/finetune_realesrgan_x4plus.yml --auto_resume ``` ### Use your own paired data You can also finetune RealESRGAN with your own paired data. It is more similar to fine-tuning ESRGAN. **1. Prepare dataset** Assume that you already have two folders: - **gt folder** (Ground-truth, high-resolution images): *datasets/DF2K/DIV2K_train_HR_sub* - **lq folder** (Low quality, low-resolution images): *datasets/DF2K/DIV2K_train_LR_bicubic_X4_sub* Then, you can prepare the meta_info txt file using the script [scripts/generate_meta_info_pairdata.py](scripts/generate_meta_info_pairdata.py): ```bash python scripts/generate_meta_info_pairdata.py --input datasets/DF2K/DIV2K_train_HR_sub datasets/DF2K/DIV2K_train_LR_bicubic_X4_sub --meta_info datasets/DF2K/meta_info/meta_info_DIV2K_sub_pair.txt ``` **2. Download pre-trained models** Download pre-trained models into `experiments/pretrained_models`. - *RealESRGAN_x4plus.pth* ```bash wget https://github.com/xinntao/Real-ESRGAN/releases/download/v0.1.0/RealESRGAN_x4plus.pth -P experiments/pretrained_models ``` - *RealESRGAN_x4plus_netD.pth* ```bash wget https://github.com/xinntao/Real-ESRGAN/releases/download/v0.2.2.3/RealESRGAN_x4plus_netD.pth -P experiments/pretrained_models ``` **3. Finetune** Modify [options/finetune_realesrgan_x4plus_pairdata.yml](options/finetune_realesrgan_x4plus_pairdata.yml) accordingly, especially the `datasets` part: ```yml train: name: DIV2K type: RealESRGANPairedDataset dataroot_gt: datasets/DF2K # modify to the root path of your folder dataroot_lq: datasets/DF2K # modify to the root path of your folder meta_info: datasets/DF2K/meta_info/meta_info_DIV2K_sub_pair.txt # modify to your own generate meta info txt io_backend: type: disk ``` We use four GPUs for training. We use the `--auto_resume` argument to automatically resume the training if necessary. ```bash CUDA_VISIBLE_DEVICES=0,1,2,3 \ python -m torch.distributed.launch --nproc_per_node=4 --master_port=4321 realesrgan/train.py -opt options/finetune_realesrgan_x4plus_pairdata.yml --launcher pytorch --auto_resume ``` Finetune with **a single GPU**: ```bash python realesrgan/train.py -opt options/finetune_realesrgan_x4plus_pairdata.yml --auto_resume ```