# Training configuration GPU: [0,1,2,3] VERBOSE: False SWINUNET: IMG_SIZE: 256 PATCH_SIZE: 4 WIN_SIZE: 8 EMB_DIM: 96 DEPTH_EN: [8, 8, 8, 8] HEAD_NUM: [8, 8, 8, 8] MLP_RATIO: 4.0 QKV_BIAS: True QK_SCALE: 8 DROP_RATE: 0. ATTN_DROP_RATE: 0. DROP_PATH_RATE: 0.1 APE: False PATCH_NORM: True USE_CHECKPOINTS: False FINAL_UPSAMPLE: 'Dual up-sample' MODEL: MODE: 'Denoising' # Optimization arguments. OPTIM: BATCH: 2 EPOCHS: 200 # EPOCH_DECAY: [10] LR_INITIAL: 2e-4 LR_MIN: 1e-6 # BETA1: 0.9 TRAINING: VAL_AFTER_EVERY: 1 RESUME: True TRAIN_PS: 256 VAL_PS: 256 TRAIN_DIR: './datasets/Denoising_DIV2K/train' # path to training data VAL_DIR: './datasets/Denoising_DIV2K/test' # path to validation data SAVE_DIR: './checkpoints' # path to save models and images