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ECCV2022 Paper - Dynamic Dual Trainable Bounds for Ultra-low Precision Super-Resolution Networks paper

Dependence

  • Python 3.6
  • PyTorch >= 1.7.0

Datasets

Please download DIV2K datasets.

Then, create a directory 'datasets' and re-organise the downloaded dataset directory as follows:

...
option.py
main_limitrange_incremental.py
datasets
  benchmark
  DIV2K

Usage

1: train full-precision models:

An example:

python main_ori.py --model edsr --scale 4 \
--save edsr_baseline_x4 \
--patch_size 192 \
--epochs 300 \
--decay 200 \
--gclip 0 \
--dir_data ./datasets

Please refer to 'baseline.sh' for more commands.

2: train quantized models:

An example:

python main_limitrange_incremental.py --scale 4 \
--k_bits 4 --model EDSR \
--pre_train ./pretrained/edsr_baseline_x4.pt --patch_size 192 \
--data_test Set14 \
--dynamic_ratio 0.3 \
--save "output/edsrx4/4bit" --dir_data ./datasets --print_every 10

Please refer to 'run.sh' for more commands.

3: test quantized models

An example:

python3 main_limitrange_incremental.py --scale 4 --model EDSR \
--k_bits 4 --save_results --test_only \
--data_test Set5+Set14+B100+Urban100  \
--save "../experiment/output/edsrx4/4bit" --dir_data ./datasets

Please refer to 'test.sh' for more commands.

calculate PSNR/SSIM

After saving the images, modify path inmetrics/calculate_PSNR_SSIM.m to generate results.

matlab -nodesktop -nosplash -r "calculate_PSNR_SSIM('$dataset',$scale,$bit);quit"

refer to metrics/run.sh for more details.

Trained FP models and quantized models: here

Download these model. Then use the commands above to obtain the reported results of the paper.

Model Bit
EDSRx4 2
3
4
EDSRx2 2
3
4
RDNx4 2
3
4
RDNx2 2
3
4
SRResNetx4 2
3
4
SRResNetx2 2
3
4

Results of pre-trained models are shown below:

EDSR

Model Dataset Bit DDTB(Ours)
EDSRx4 Set5 2 30.97/0.876
3 31.52/0.883
4 31.85/0.889
Set14 2 27.87/0.764
3 28.18/0.771
4 28.39/0.777
BSD100 2 27.09/0.719
3 27.30/0.727
4 27.44/0.732
Urban100 2 24.82/0.742
3 25.33/0.761
4 25.69/0.774
EDSRx2 Set5 2 37.25/0.958
3 37.51/0.958
4 37.72/0.959
Set14 2 32.87/0.911
3 33.17/0.914
4 33.35/0.916
BSD100 2 31.67/0.893
3 31.89/0.896
4 32.01/0.898
Urban100 2 30.34/0.910
3 31.01/0.919
4 31.39/0.922

RDN

Model Dataset Bit DDTB(Ours)
RDNx4 Set5 2 30.57/0.867
3 31.49/0.883
4 31.97/0.891
Set14 2 27.56/0.757
3 28.17/0.772
4 28.49/0.780
BDS100 2 26.91/0.714
3 27.30/0.728
4 27.49/0.735
Urban100 2 24.50/0.728
3 25.35/0.764
4 25.90/0.783
RDNx2 Set5 2 36.76/0.955
3 37.61/0.959
4 37.88/0.960
Set14 2 32.54/0.908
3 33.26/0.915
4 33.51/0.917
BSD100 2 31.44/0.890
3 31.91/0.897
4 32.12/0.899
Urban100 2 29.77/0.903
3 31.10/0.920
4 31.76/0.926

SRResNet

Model Dataset Bit DDTB(Ours)
SRResNetx4 Set5 2 31.51/0.887
3 31.85/0.890
4 31.97/0.892
Set14 2 28.23/0.773
3 28.39/0.776
4 28.46/0.778
BSD100 2 27.33/0.728
3 27.44/0.731
4 27.48/0.733
Urban100 2 25.37/0.762
3 25.64/0.770
4 25.77/0.776
SRResNetx2 Set5 2 37.46/0.958
3 37.67/0.959
4 37.78/0.960
Set14 2 33.02/0.913
3 33.24/0.915
4 33.32/0.916
BSD100 2 31.78/0.895
3 31.95/0.897
4 32.03/0.898
Urban100 2 30.57/0.913
3 31.15/0.919
4 31.40/0.921

Contact

For any question, be free to contact: viper.zhong@gmail.com. The github issue is also welcome.

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Pytorch implementation of our paper accepted by ECCV2022 -- Dynamic Dual Trainable Bounds for Ultra-low Precision Super-Resolution Networks

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