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DA_dahazing

This is the PyTorch implementation for our CVPR'20 paper:

**Yuanjie Shao, Lerenhan Li, Wenqi Ren, Changxin Gao, Nong Sang. Domain Adaptation for Image Dehazing. PAPER **

Environment

  1. Python 3.6
  2. PyTorch 1.0.0
  3. CUDA 9.2
  4. Ubuntu 16.04

Training

  • Train CycleGAN
python train.py --dataroot ./datasets/dehazing --name run_cyclegan --learn_residual --resize_or_crop crop --display_freq 100 --print_freq 100 --display_port 8091 --which_model_netG resnet_9blocks --lambda_A 1 --lambda_B 1 --lambda_identity 0.1   --niter 90 --niter_decay 0 --fineSize 256 --no_html --batchSize 2  --gpu_id 2 --update_ratio 1 --unlabel_decay 0.99 --save_epoch_freq 1 --model cyclegan
  • Train Fr using the pretrained CycleGAN
python train.py  --dataroot ./datasets/dehazing --name run_fr_depth --lambda_Dehazing 10 --lambda_Dehazing_DC 1e-2 --lambda_Dehazing_TV 1e-2 --learn_residual --resize_or_crop crop --display_freq 100 --print_freq 100 --display_port 8090  --epoch_count 1 --niter 90 --niter_decay 0 --fineSize 256 --no_html --batchSize 2   --gpu_id 3 --update_ratio 1 --unlabel_decay 0.99 --save_epoch_freq 1 --model RDehazingnet --g_s2r_premodel ./checkpoints/run_cyclegan/netG_A.pth  
  • Train Fs using the pretrained CycleGAN
python train.py  --dataroot ./datasets/dehazing --name run_fs_depth --lambda_Dehazing 10 --lambda_Dehazing_DC 1e-2 --lambda_Dehazing_TV 1e-2 --learn_residual --resize_or_crop crop --display_freq 100 --print_freq 100 --display_port 8094  --epoch_count 1 --niter 90 --niter_decay 0 --fineSize 256 --no_html --batchSize 2   --gpu_id 3 --update_ratio 1 --unlabel_decay 0.99 --save_epoch_freq 1 --model SDehazingnet --g_r2s_premodel ./checkpoints/run_cyclegan/netG_B.pth 
  • Train DA_dehazing using the pretrained Fr, Fs and CycleGAN.
python train.py  --dataroot ./datasets/dehazing --name run_danet_depth --epoch_count 1 --niter 50 --lambda_S 1 --lambda_R 1 --lambda_identity 0.1 --lambda_Dehazing 10 --lambda_Dehazing_Con 0.1 --lambda_Dehazing_DC 1e-2 --lambda_Dehazing_TV 1e-3 --learn_residual --resize_or_crop crop --display_freq 100 --print_freq 100 --display_port 8094 --niter_decay 0 --fineSize 256 --no_html --batchSize 2   --gpu_id 3 --update_ratio 1 --unlabel_decay 0.99 --save_epoch_freq 1 --model danet --S_Dehazing_premodel ./checkpoints/run_fs_depth/netS_Dehazing.pth --R_Dehazing_premodel ./checkpoints/run_fr_depth/netR_Dehazing.pth --g_s2r_premodel ./checkpoints/run_cyclegan_depth/netG_A.pth --g_r2s_premodel ./checkpoints/run_cyclegan/netG_B.pth --d_r_premodel ./checkpoints/run_cyclegan/netD_A.pth --d_s_premodel ./checkpoints/run_cyclegan/netD_B.pth

Test

Baidu network disk: MODELS. Extraction code:8326

Google drive: MODELS.

python test.py --dataroot ./datasets/dehazing --name run_test --learn_residual --resize_or_crop crop --display_port 8095 --which_model_netG resnet_9blocks  --batchSize 1 --gpu_id 3 --model SDehazingnet --S_Dehazing_premodel ./checkpoints/run_danet_depth/netS_Dehazing.pth
python test.py --dataroot ./datasets/dehazing --name run_test --learn_residual --resize_or_crop crop --display_port 8095 --which_model_netG resnet_9blocks  --batchSize 1 --gpu_id 3 --model RDehazingnet --R_Dehazing_premodel ./checkpoints/run_danet_depth/netR_Dehazing.pth

Acknowledgments

Code is inspired by GASDA and CycleGAN.

Contact

Yuanjie Shao: shaoyuanjie@hust.edu.cn

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