| model: |
| swinir: |
| target: model.swinir.SwinIR |
| params: |
| img_size: 64 |
| patch_size: 1 |
| in_chans: 3 |
| embed_dim: 180 |
| depths: [6, 6, 6, 6, 6, 6, 6, 6] |
| num_heads: [6, 6, 6, 6, 6, 6, 6, 6] |
| window_size: 8 |
| mlp_ratio: 2 |
| sf: 8 |
| img_range: 1.0 |
| upsampler: "nearest+conv" |
| resi_connection: "1conv" |
| unshuffle: True |
| unshuffle_scale: 8 |
|
|
| dataset: |
| train: |
| target: dataset.codeformer.CodeformerDataset |
| params: |
| |
| file_list: |
| file_backend_cfg: |
| target: dataset.file_backend.HardDiskBackend |
| out_size: 512 |
| crop_type: center |
| blur_kernel_size: 41 |
| kernel_list: ['iso', 'aniso'] |
| kernel_prob: [0.5, 0.5] |
| blur_sigma: [0.1, 12] |
| downsample_range: [1, 12] |
| noise_range: [0, 15] |
| jpeg_range: [30, 100] |
| val: |
| target: dataset.codeformer.CodeformerDataset |
| params: |
| |
| file_list: |
| file_backend_cfg: |
| target: dataset.file_backend.HardDiskBackend |
| out_size: 512 |
| crop_type: center |
| blur_kernel_size: 41 |
| kernel_list: ['iso', 'aniso'] |
| kernel_prob: [0.5, 0.5] |
| blur_sigma: [0.1, 12] |
| downsample_range: [1, 12] |
| noise_range: [0, 15] |
| jpeg_range: [30, 100] |
|
|
| train: |
| |
| exp_dir: |
| learning_rate: 1e-4 |
| |
| batch_size: 96 |
| num_workers: |
| train_steps: 150000 |
| log_every: 50 |
| ckpt_every: 10000 |
| image_every: 1000 |
| val_every: 1000 |
| resume: ~ |
|
|