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## Training
1. To download GoPro training and testing data, run
```
python download_data.py --data train-test
```
2. Generate image patches from full-resolution training images of GoPro dataset
```
python generate_patches_gopro.py
```
3. To train Restormer, run
```
cd Restormer
./train.sh Motion_Deblurring/Options/Deblurring_Restormer.yml
```
**Note:** The above training script uses 8 GPUs by default. To use any other number of GPUs, modify [Restormer/train.sh](../train.sh) and [Motion_Deblurring/Options/Deblurring_Restormer.yml](Options/Deblurring_Restormer.yml)
## Evaluation
Download the pre-trained [model](https://drive.google.com/drive/folders/1czMyfRTQDX3j3ErByYeZ1PM4GVLbJeGK?usp=sharing) and place it in `./pretrained_models/`
#### Testing on GoPro dataset
- Download GoPro testset, run
```
python download_data.py --data test --dataset GoPro
```
- Testing
```
python test.py --dataset GoPro
```
#### Testing on HIDE dataset
- Download HIDE testset, run
```
python download_data.py --data test --dataset HIDE
```
- Testing
```
python test.py --dataset HIDE
```
#### Testing on RealBlur-J dataset
- Download RealBlur-J testset, run
```
python download_data.py --data test --dataset RealBlur_J
```
- Testing
```
python test.py --dataset RealBlur_J
```
#### Testing on RealBlur-R dataset
- Download RealBlur-R testset, run
```
python download_data.py --data test --dataset RealBlur_R
```
- Testing
```
python test.py --dataset RealBlur_R
```
#### To reproduce PSNR/SSIM scores of the paper (Table 2) on GoPro and HIDE datasets, run this MATLAB script
```
evaluate_gopro_hide.m
```
#### To reproduce PSNR/SSIM scores of the paper (Table 2) on RealBlur dataset, run
```
evaluate_realblur.py
```