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Learning Real-World Image De-Weathering with Imperfect Supervision

arXiv

News

  • Oct 24, 2023: The paper is released!

Abstract: Real-world image de-weathering aims at removing various undesirable weather-related artifacts. Owing to the impossibility of capturing image pairs concurrently, existing real-world de-weathering datasets often exhibit inconsistent illumination, position, and textures between the ground-truth images and the input degraded images, resulting in imperfect supervision. Such non-ideal supervision negatively affects the training process of learning-based de-weathering methods. In this work, we attempt to address the problem with a unified solution for various inconsistencies. Specifically, inspired by information bottleneck theory, we first develop a Consistent Label Constructor (CLC) to generate a pseudo-label as consistent as possible with the input degraded image while removing most weather-related degradations. In particular, multiple adjacent frames of the current input are also fed into CLC to enhance the pseudo-label. Then we combine the original imperfect labels and pseudo-labels to jointly supervise the de-weathering model by the proposed Information Allocation Strategy (IAS). During testing, only the de-weathering model is used for inference. Experiments on two real-world de-weathering datasets show that our method helps existing de-weathering models achieve better performance.


Setup

1. Prepare Datasets

GT-Rain dataset Download the dataset from [here](https://drive.google.com/drive/folders/1NSRl954QPcGIgoyJa_VjQwh_gEaHWPb8).
WeatherStream dataset Download the dataset from [here](https://drive.google.com/drive/folders/12Z9rBSTs0PPNHLieyU2vnCTzR6fOFLrT).

2. Download Weights

The pretrained model of "Ours-RainRobust" trained using GT-Rain-Snow and WeatherStream can be downloaded from url1 (password:rs5g) and url2 (password:r3g1), respectively.

The final file tree likes:

dataset
├── WeatherStream
├── ...
code
├── checkpoints
    ├── GT-Rain-Snow
        ├── UNET_model_20.pth
    ├── WeatherStream
        ├── UNET_model_20.pth
├── imperfect-deweathering
    ├── train.py
    ├── test.py
    ├── ...

Inference

Just run this command in ./scripts_eval/eval_unet1.sh:

echo "Start to test the model...."

name="GT-Rain-Snow"  # or modify to WeatherStream
device="0"  # GPU you used
load_iter=20
build_dir="../checkpoints/"$name"/test_epoch_"$load_iter

if [ ! -d "$build_dir" ]; then
        mkdir $build_dir
fi

LOG=$build_dir/`date +%Y-%m-%d-%H-%M-%S`.txt

python test.py \
    --test_dataset_size 'all'\
    --input_frames 1\
    --dataset_name MULGTWEA\
    --model multiencgtrainselfsu\
    --load_iter $load_iter\
    --name $name\
    --calc_metrics True\
    --save_imgs True\  # you can modify it to False if you don't want to save images
    --gpu_ids $device\
    -j 4 | tee $LOG

Network Architecture

Results

Experiments are conducted with Restormer and RainRobust networks on GT-Rain-Snow and WeatherStream datasets, respectively.

Visualizations

Qualitative testing results of the de-weathering models trained with GT-Rain-Snow dataset.

Qualitative testing results of the de-weathering models trained with WeatherStream dataset.

Citation

If you make use of our work, please cite our paper.

@article{liu2023learning,
  title={Learning Real-World Image De-Weathering with Imperfect Supervision},
  author={Liu, Xiaohui and Zhang, Zhilu and Wu, Xiaohe and Feng, Chaoyu and Wang, Xiaotao and LEI, LEI and Zuo, Wangmeng},
  journal={arXiv preprint arXiv:2310.14958},
  year={2023}
}

Acknowledgement

  • This repo is built upon the framework if CycleGAN, and we borrow some code from GT-Rain and Restormer, thanks for their excellent work.

About

[AAAI 2024] Official pytorch implementation of “Learning Real-World Image De-Weathering with Imperfect Supervision”

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