Code for the paper TransWeather: Transformer-based Restoration of Images Degraded by Adverse Weather Conditions, CVPR 2022
Note: This code base is still not complete. The Transweather model can be found in this code-base. Please feel free to take the model file and run it with your train/eval. Train and Eval scripts for this code-base will be updated later when I have time. Sorry for the incovenience.
This repo hosts the implentation code for the paper "TransWeather". We also provide code for a strong transformer baseline for weather removal tasks.
Removing adverse weather conditions like rain, fog, and snow from images is an important problem in many applications. Most methods proposed in the literature have been designed to deal with just removing one type of degradation. Recently, a CNN-based method using neural architecture search (All-in-One) was proposed to remove all the weather conditions at once. However, it has a large number of parameters as it uses multiple encoders to cater to each weather removal task and still has scope for improvement in its performance. In this work, we focus on developing an efficient solution for the all adverse weather removal problem. To this end, we propose TransWeather, a transformer-based end-to-end model with just a single encoder and a decoder that can restore an image degraded by any weather condition. Specifically, we utilize a novel transformer encoder using intra-patch transformer blocks to enhance attention inside the patches to effectively remove smaller weather degradations. We also introduce a transformer decoder with learnable weather type embeddings to adjust to the weather degradation at hand. TransWeather achieves significant improvements across multiple test datasets over both All-in-One network as well as methods fine-tuned for specific tasks.
A change in the PSNR values are observed as the calulation is done before saving the image which is not adept with previous works. However, we still get a better performance in most datasets (27.96 vs All-in-One's 24.71). It can also be noted that the TransWeather model can be further finetuned to get a better performance on individual datasets. These updates will be reflected on the new arxiv version.
The code is stable while using Python 3.6.13, CUDA >=10.1
- Clone this repository:
git clone https://github.com/jeya-maria-jose/TransWeather
cd TransWeather
To install all the dependencies using conda:
conda env create -f environment.yml
conda activate transweather
If you prefer pip, install following versions:
timm==0.3.2
mmcv-full==1.2.7
torch==1.7.1
torchvision==0.8.2
opencv-python==4.5.1.48
TransWeather is trained on a combination of images sampled from Outdoor-Rain, Snow100K, and Raindrop datasets (similar to All-in-One (CVPR 2020)), dubbed as "All-Weather", containing 18069 images. It can be downloaded from this link.
Download the datasets and arrange them in the following format. T
TransWeather
├── data
| ├── train # Training
| | ├── <dataset_name>
| | | ├── input # rain images
| | | └── gt # clean images
| | └── dataset_filename.txt
| └── test # Testing
| | ├── <dataset_name>
| | | ├── input # rain images
| | | └── gt # clean images
| | └── dataset_filename.txt
Note that Transweather is built to solve all adverse weather problem with a single model. We observe that, additionally TransWeather can be easilty modified (removing the transformer decoder) to just focus on an individual restoration task. To train just the Transweather-encoder on other datasets (like Rain-800), organize the dataset similar to all-weather and run the following command:
python train-individual.py -train_batch_size 32 -exp_name Transweather-finetune -epoch_start 0 -num_epochs 250
Change train-individual.py
with the necesarry details of the data to be trained on. Note that the network used there is a sub-section of our original Transweather architecture without the weather queries.
This code-base uses certain code-blocks and helper functions from Syn2Real, Segformer, and ViT.
@misc{valanarasu2021transweather,
title={TransWeather: Transformer-based Restoration of Images Degraded by Adverse Weather Conditions},
author={Jeya Maria Jose Valanarasu and Rajeev Yasarla and Vishal M. Patel},
year={2021},
eprint={2111.14813},
archivePrefix={arXiv},
primaryClass={cs.CV}
}