caiyuanhao1998 / Retinexformer

"Retinexformer: One-stage Retinex-based Transformer for Low-light Image Enhancement" (ICCV 2023) & (NTIRE 2024 Challenge)
https://arxiv.org/abs/2303.06705
MIT License
828 stars 64 forks source link
basicsr detection iccv2023 image-restoration low-light-enhance low-light-enhancement low-light-enhancer low-light-image-enhancement low-light-vision nighttime-enhancement ntire object-detection transformer

 

[![arXiv](https://img.shields.io/badge/arxiv-paper-179bd3)](https://arxiv.org/abs/2303.06705) [![NTIRE](https://img.shields.io/badge/NTIRE_2024-leaderboard-179bd3)](https://codalab.lisn.upsaclay.fr/competitions/17640#results) [![zhihu](https://img.shields.io/badge/zhihu-知乎-179bd3)](https://zhuanlan.zhihu.com/p/657927878) [![PWC](https://img.shields.io/endpoint.svg?url=https://paperswithcode.com/badge/retinexformer-one-stage-retinex-based/low-light-image-enhancement-on-lol-v2-1)](https://paperswithcode.com/sota/low-light-image-enhancement-on-lol-v2-1?p=retinexformer-one-stage-retinex-based) [![PWC](https://img.shields.io/endpoint.svg?url=https://paperswithcode.com/badge/retinexformer-one-stage-retinex-based/low-light-image-enhancement-on-mit-adobe-1)](https://paperswithcode.com/sota/low-light-image-enhancement-on-mit-adobe-1?p=retinexformer-one-stage-retinex-based) [![PWC](https://img.shields.io/endpoint.svg?url=https://paperswithcode.com/badge/retinexformer-one-stage-retinex-based/low-light-image-enhancement-on-sdsd-indoor)](https://paperswithcode.com/sota/low-light-image-enhancement-on-sdsd-indoor?p=retinexformer-one-stage-retinex-based) [![PWC](https://img.shields.io/endpoint.svg?url=https://paperswithcode.com/badge/retinexformer-one-stage-retinex-based/low-light-image-enhancement-on-sdsd-outdoor)](https://paperswithcode.com/sota/low-light-image-enhancement-on-sdsd-outdoor?p=retinexformer-one-stage-retinex-based) [![PWC](https://img.shields.io/endpoint.svg?url=https://paperswithcode.com/badge/retinexformer-one-stage-retinex-based/low-light-image-enhancement-on-smid)](https://paperswithcode.com/sota/low-light-image-enhancement-on-smid?p=retinexformer-one-stage-retinex-based) [![PWC](https://img.shields.io/endpoint.svg?url=https://paperswithcode.com/badge/retinexformer-one-stage-retinex-based/low-light-image-enhancement-on-sid)](https://paperswithcode.com/sota/low-light-image-enhancement-on-sid?p=retinexformer-one-stage-retinex-based) [![PWC](https://img.shields.io/endpoint.svg?url=https://paperswithcode.com/badge/retinexformer-one-stage-retinex-based/low-light-image-enhancement-on-lol-v2)](https://paperswithcode.com/sota/low-light-image-enhancement-on-lol-v2?p=retinexformer-one-stage-retinex-based) [![PWC](https://img.shields.io/endpoint.svg?url=https://paperswithcode.com/badge/retinexformer-one-stage-retinex-based/low-light-image-enhancement-on-lol)](https://paperswithcode.com/sota/low-light-image-enhancement-on-lol?p=retinexformer-one-stage-retinex-based) [![PWC](https://img.shields.io/endpoint.svg?url=https://paperswithcode.com/badge/retinexformer-one-stage-retinex-based/low-light-image-enhancement-on-mef)](https://paperswithcode.com/sota/low-light-image-enhancement-on-mef?p=retinexformer-one-stage-retinex-based) [![PWC](https://img.shields.io/endpoint.svg?url=https://paperswithcode.com/badge/retinexformer-one-stage-retinex-based/low-light-image-enhancement-on-dicm)](https://paperswithcode.com/sota/low-light-image-enhancement-on-dicm?p=retinexformer-one-stage-retinex-based) [![PWC](https://img.shields.io/endpoint.svg?url=https://paperswithcode.com/badge/retinexformer-one-stage-retinex-based/low-light-image-enhancement-on-lime)](https://paperswithcode.com/sota/low-light-image-enhancement-on-lime?p=retinexformer-one-stage-retinex-based) [![PWC](https://img.shields.io/endpoint.svg?url=https://paperswithcode.com/badge/retinexformer-one-stage-retinex-based/low-light-image-enhancement-on-npe)](https://paperswithcode.com/sota/low-light-image-enhancement-on-npe?p=retinexformer-one-stage-retinex-based) [![PWC](https://img.shields.io/endpoint.svg?url=https://paperswithcode.com/badge/retinexformer-one-stage-retinex-based/low-light-image-enhancement-on-vv)](https://paperswithcode.com/sota/low-light-image-enhancement-on-vv?p=retinexformer-one-stage-retinex-based) [![PWC](https://img.shields.io/endpoint.svg?url=https://paperswithcode.com/badge/retinexformer-one-stage-retinex-based/image-enhancement-on-mit-adobe-5k)](https://paperswithcode.com/sota/image-enhancement-on-mit-adobe-5k?p=retinexformer-one-stage-retinex-based)

Introduction

This is a baseline and toolbox for wide-range low-light image enhancement. This repo supports over 15 benchmarks and extremely high-resolution (up to 4000x6000) low-light enhancement. Our method Retinexformer won the second place in the NTIRE 2024 Challenge on Low Light Enhancement. If you find this repo useful, please give it a star ⭐ and consider citing our paper in your research. Thank you.

Awards

News

Results

Performance on LOL-v1, LOL-v2-real, LOL-v2-synthetic, SID, SMID, SDSD-in, and SDSD-out: ![results1](/figure/seven_results.png)
Performance on LOL with the same test setting as KinD, LLFlow, and diffusion models: | Metric | LOL-v1 | LOL-v2-real | LOL-v2-synthetic | | :----------------------------------------------------------: | :----------------------------------------------------------: | :----------------------------------------------------------: | :----------------------------------------------------------: | | PSNR | 27.18 | 27.71 | 29.04 | | SSIM | 0.850 | 0.856 | 0.939 | Please note that we do not suggest this test setting because it uses the mean of the ground truth to obtain better results. But, if you want to follow KinD, LLFlow, and recent diffusion-based works, it is your choice to use this test setting. Please refer to the `Testing` part for details.

Performance on NTIRE 2024 test-challenge: | Method | Retinexformer | MST++ | Ensemble | | :----------------------------------------------------------: | :----------------------------------------------------------: | :----------------------------------------------------------: | :----------------------------------------------------------: | | PSNR | 24.61 | 24.59 | 25.30 | | SSIM | 0.85 | 0.85 | 0.85 | Feel free to check the [Codalab leaderboard](https://codalab.lisn.upsaclay.fr/competitions/17640#results). Our method ranks second. ![results_ntire](/figure/ntire_2024.png)
Performance on MIT Adobe FiveK: ![results2](/figure/fivek_results.png)
Performance on LIME, NPE, MEF, DICM, and VV: ![results3](/figure/visual_compare_no_gt.png)
Performance on ExDark Nighttime object detection: ![results4](/figure/exdark_results.png)

Gallery

NTIRE - dev - 2000x3000 NTIRE - challenge - 4000x6000

 

1. Create Environment

We suggest you use pytorch 1.11 to re-implement the results in our ICCV 2023 paper and pytorch 2 to re-implement the results in NTIRE 2024 Challenge because pytorch 2 can save more memory in mix-precision training.

1.1 Install the environment with Pytorch 1.11

pip install matplotlib scikit-learn scikit-image opencv-python yacs joblib natsort h5py tqdm tensorboard

pip install einops gdown addict future lmdb numpy pyyaml requests scipy yapf lpips


- Install BasicSR

python setup.py develop --no_cuda_ext


### 1.2 Install the environment with Pytorch 2

- Make Conda Environment

conda create -n torch2 python=3.9 -y conda activate torch2


- Install Dependencies

conda install pytorch torchvision torchaudio pytorch-cuda=11.8 -c pytorch -c nvidia

pip install matplotlib scikit-learn scikit-image opencv-python yacs joblib natsort h5py tqdm tensorboard

pip install einops gdown addict future lmdb numpy pyyaml requests scipy yapf lpips thop timm


- Install BasicSR

python setup.py develop --no_cuda_ext


 

## 2. Prepare Dataset
Download the following datasets:

LOL-v1 [Baidu Disk](https://pan.baidu.com/s/1ZAC9TWR-YeuLIkWs3L7z4g?pwd=cyh2) (code: `cyh2`), [Google Drive](https://drive.google.com/file/d/1L-kqSQyrmMueBh_ziWoPFhfsAh50h20H/view?usp=sharing)

LOL-v2 [Baidu Disk](https://pan.baidu.com/s/1X4HykuVL_1WyB3LWJJhBQg?pwd=cyh2) (code: `cyh2`), [Google Drive](https://drive.google.com/file/d/1Ou9EljYZW8o5dbDCf9R34FS8Pd8kEp2U/view?usp=sharing)

SID [Baidu Disk](https://pan.baidu.com/share/init?surl=HRr-5LJO0V0CWqtoctQp9w) (code: `gplv`), [Google Drive](https://drive.google.com/drive/folders/1eQ-5Z303sbASEvsgCBSDbhijzLTWQJtR?usp=share_link&pli=1)

SMID [Baidu Disk](https://pan.baidu.com/share/init?surl=Qol_4GsIjGDR8UT9IRZbBQ) (code: `btux`), [Google Drive](https://drive.google.com/drive/folders/1OV4XgVhipsRqjbp8SYr-4Rpk3mPwvdvG)

SDSD-indoor [Baidu Disk](https://pan.baidu.com/s/1rfRzshGNcL0MX5soRNuwTA?errmsg=Auth+Login+Params+Not+Corret&errno=2&ssnerror=0#list/path=%2F) (code: `jo1v`), [Google Drive](https://drive.google.com/drive/folders/14TF0f9YQwZEntry06M93AMd70WH00Mg6)

SDSD-outdoor [Baidu Disk](https://pan.baidu.com/share/init?surl=JzDQnFov-u6aBPPgjSzSxQ) (code: `uibk`), [Google Drive](https://drive.google.com/drive/folders/14TF0f9YQwZEntry06M93AMd70WH00Mg6)

MIT-Adobe FiveK [Baidu Disk](https://pan.baidu.com/s/1ajax7N9JmttTwY84-8URxA?pwd=cyh2) (code:`cyh2`), [Google Drive](https://drive.google.com/file/d/11HEUmchFXyepI4v3dhjnDnmhW_DgwfRR/view?usp=sharing), [Official](https://data.csail.mit.edu/graphics/fivek/)

NTIRE 2024 [Baidu Disk](https://pan.baidu.com/s/1Tl-LUhwsPh6XFA2SqR5c8Q?pwd=cyh2) (code:`cyh2`), Google Drive links for [training input](https://drive.google.com/file/d/1Js9yHmV0xAWhT5oJKzfx6oOr_7k5hcNg/view), [training GT](https://drive.google.com/file/d/1PUJgJiEyrIj5TgwcQlFvVGuIe3_PXMLY/view), and [mini-val set](https://drive.google.com/drive/folders/1M-WVWToH1HhMtmQlYrb8qlNCQgi0kG3y?usp=sharing).

**Note:** 

(1) Please use [bandizip](https://www.bandisoft.com/bandizip/) to jointly unzip the `.zip` and `.z01` files of SMID, SDSD-indoor, and SDSD-outdoor 

(2) Please process the raw images of the MIT Adobe FiveK dataset following [the sRGB output mode](https://github.com/nothinglo/Deep-Photo-Enhancer/issues/38) or directly download and use the sRGB image pairs processed by us in the [Baidu Disk](https://pan.baidu.com/s/1ajax7N9JmttTwY84-8URxA?pwd=cyh2) (code:`cyh2`) and [Google Drive](https://drive.google.com/file/d/11HEUmchFXyepI4v3dhjnDnmhW_DgwfRR/view?usp=sharing)

(3) Please download the `text_list.txt` from [Google Drive](https://drive.google.com/file/d/199qrfizUeZfgq3qVjrM74mZ_nlacgwiP/view?usp=sharing) or [Baidu Disk](https://pan.baidu.com/s/1GQfaQLI6tvB0IrTMPOM_9Q?pwd=ggbh) (code: `ggbh`) and then put it into the folder `data/SMID/SMID_Long_np/`

<details close>
<summary><b> Then organize these datasets as follows: </b></summary>
|--data   
|    |--LOLv1
|    |    |--Train
|    |    |    |--input
|    |    |    |    |--100.png
|    |    |    |    |--101.png
|    |    |    |     ...
|    |    |    |--target
|    |    |    |    |--100.png
|    |    |    |    |--101.png
|    |    |    |     ...
|    |    |--Test
|    |    |    |--input
|    |    |    |    |--111.png
|    |    |    |    |--146.png
|    |    |    |     ...
|    |    |    |--target
|    |    |    |    |--111.png
|    |    |    |    |--146.png
|    |    |    |     ...
|    |--LOLv2
|    |    |--Real_captured
|    |    |    |--Train
|    |    |    |    |--Low
|    |    |    |    |    |--00001.png
|    |    |    |    |    |--00002.png
|    |    |    |    |     ...
|    |    |    |    |--Normal
|    |    |    |    |    |--00001.png
|    |    |    |    |    |--00002.png
|    |    |    |    |     ...
|    |    |    |--Test
|    |    |    |    |--Low
|    |    |    |    |    |--00690.png
|    |    |    |    |    |--00691.png
|    |    |    |    |     ...
|    |    |    |    |--Normal
|    |    |    |    |    |--00690.png
|    |    |    |    |    |--00691.png
|    |    |    |    |     ...
|    |    |--Synthetic
|    |    |    |--Train
|    |    |    |    |--Low
|    |    |    |    |   |--r000da54ft.png
|    |    |    |    |   |--r02e1abe2t.png
|    |    |    |    |    ...
|    |    |    |    |--Normal
|    |    |    |    |   |--r000da54ft.png
|    |    |    |    |   |--r02e1abe2t.png
|    |    |    |    |    ...
|    |    |    |--Test
|    |    |    |    |--Low
|    |    |    |    |   |--r00816405t.png
|    |    |    |    |   |--r02189767t.png
|    |    |    |    |    ...
|    |    |    |    |--Normal
|    |    |    |    |   |--r00816405t.png
|    |    |    |    |   |--r02189767t.png
|    |    |    |    |    ...
|    |--SDSD
|    |    |--indoor_static_np
|    |    |    |--input
|    |    |    |    |--pair1
|    |    |    |    |   |--0001.npy
|    |    |    |    |   |--0002.npy
|    |    |    |    |    ...
|    |    |    |    |--pair2
|    |    |    |    |   |--0001.npy
|    |    |    |    |   |--0002.npy
|    |    |    |    |    ...
|    |    |    |     ...
|    |    |    |--GT
|    |    |    |    |--pair1
|    |    |    |    |   |--0001.npy
|    |    |    |    |   |--0002.npy
|    |    |    |    |    ...
|    |    |    |    |--pair2
|    |    |    |    |   |--0001.npy
|    |    |    |    |   |--0002.npy
|    |    |    |    |    ...
|    |    |    |     ...
|    |    |--outdoor_static_np
|    |    |    |--input
|    |    |    |    |--MVI_0898
|    |    |    |    |   |--0001.npy
|    |    |    |    |   |--0002.npy
|    |    |    |    |    ...
|    |    |    |    |--MVI_0918
|    |    |    |    |   |--0001.npy
|    |    |    |    |   |--0002.npy
|    |    |    |    |    ...
|    |    |    |     ...
|    |    |    |--GT
|    |    |    |    |--MVI_0898
|    |    |    |    |   |--0001.npy
|    |    |    |    |   |--0002.npy
|    |    |    |    |    ...
|    |    |    |    |--MVI_0918
|    |    |    |    |   |--0001.npy
|    |    |    |    |   |--0002.npy
|    |    |    |    |    ...
|    |    |    |     ...
|    |--SID
|    |    |--short_sid2
|    |    |    |--00001
|    |    |    |    |--00001_00_0.04s.npy
|    |    |    |    |--00001_00_0.1s.npy
|    |    |    |    |--00001_01_0.04s.npy
|    |    |    |    |--00001_01_0.1s.npy
|    |    |    |     ...
|    |    |    |--00002
|    |    |    |    |--00002_00_0.04s.npy
|    |    |    |    |--00002_00_0.1s.npy
|    |    |    |    |--00002_01_0.04s.npy
|    |    |    |    |--00002_01_0.1s.npy
|    |    |    |     ...
|    |    |     ...
|    |    |--long_sid2
|    |    |    |--00001
|    |    |    |    |--00001_00_0.04s.npy
|    |    |    |    |--00001_00_0.1s.npy
|    |    |    |    |--00001_01_0.04s.npy
|    |    |    |    |--00001_01_0.1s.npy
|    |    |    |     ...
|    |    |    |--00002
|    |    |    |    |--00002_00_0.04s.npy
|    |    |    |    |--00002_00_0.1s.npy
|    |    |    |    |--00002_01_0.04s.npy
|    |    |    |    |--00002_01_0.1s.npy
|    |    |    |     ...
|    |    |     ...
|    |--SMID
|    |    |--SMID_LQ_np
|    |    |    |--0001
|    |    |    |    |--0001.npy
|    |    |    |    |--0002.npy
|    |    |    |     ...
|    |    |    |--0002
|    |    |    |    |--0001.npy
|    |    |    |    |--0002.npy
|    |    |    |     ...
|    |    |     ...
|    |    |--SMID_Long_np
|    |    |    |--text_list.txt
|    |    |    |--0001
|    |    |    |    |--0001.npy
|    |    |    |    |--0002.npy
|    |    |    |     ...
|    |    |    |--0002
|    |    |    |    |--0001.npy
|    |    |    |    |--0002.npy
|    |    |    |     ...
|    |    |     ...
|    |--FiveK
|    |    |--train
|    |    |    |--input
|    |    |    |    |--a0099-kme_264.jpg
|    |    |    |    |--a0101-kme_610.jpg
|    |    |    |     ...
|    |    |    |--target
|    |    |    |    |--a0099-kme_264.jpg
|    |    |    |    |--a0101-kme_610.jpg
|    |    |    |     ...
|    |    |--test
|    |    |    |--input
|    |    |    |    |--a4574-DSC_0038.jpg
|    |    |    |    |--a4576-DSC_0217.jpg
|    |    |    |     ...
|    |    |    |--target
|    |    |    |    |--a4574-DSC_0038.jpg
|    |    |    |    |--a4576-DSC_0217.jpg
|    |    |    |     ...
|    |--NTIRE
|    |    |--train
|    |    |    |--input
|    |    |    |    |--1.png
|    |    |    |    |--3.png
|    |    |    |     ...
|    |    |    |--target
|    |    |    |    |--1.png
|    |    |    |    |--3.png
|    |    |    |     ...
|    |    |--minival
|    |    |    |--input
|    |    |    |    |--1.png
|    |    |    |    |--31.png
|    |    |    |     ...
|    |    |    |--target
|    |    |    |    |--1.png
|    |    |    |    |--31.png
|    |    |    |     ...

</details>

We also provide download links for LIME, NPE, MEF, DICM, and VV datasets that have no ground truth:

[Baidu Disk](https://pan.baidu.com/s/1oHg03tOfWWLp4q1R6rlzww?pwd=cyh2) (code: `cyh2`)
 or [Google Drive](https://drive.google.com/drive/folders/1RR50EJYGIHaUYwq4NtK7dx8faMSvX8Xp?usp=drive_link)

&nbsp;                    

## 3. Testing

Download our models from [Baidu Disk](https://pan.baidu.com/s/13zNqyKuxvLBiQunIxG_VhQ?pwd=cyh2) (code: `cyh2`) or [Google Drive](https://drive.google.com/drive/folders/1ynK5hfQachzc8y96ZumhkPPDXzHJwaQV?usp=drive_link). Put them in folder `pretrained_weights`

```shell
# activate the environment
conda activate Retinexformer

# LOL-v1
python3 Enhancement/test_from_dataset.py --opt Options/RetinexFormer_LOL_v1.yml --weights pretrained_weights/LOL_v1.pth --dataset LOL_v1

# LOL-v2-real
python3 Enhancement/test_from_dataset.py --opt Options/RetinexFormer_LOL_v2_real.yml --weights pretrained_weights/LOL_v2_real.pth --dataset LOL_v2_real

# LOL-v2-synthetic
python3 Enhancement/test_from_dataset.py --opt Options/RetinexFormer_LOL_v2_synthetic.yml --weights pretrained_weights/LOL_v2_synthetic.pth --dataset LOL_v2_synthetic

# SID
python3 Enhancement/test_from_dataset.py --opt Options/RetinexFormer_SID.yml --weights pretrained_weights/SID.pth --dataset SID

# SMID
python3 Enhancement/test_from_dataset.py --opt Options/RetinexFormer_SMID.yml --weights pretrained_weights/SMID.pth --dataset SMID

# SDSD-indoor
python3 Enhancement/test_from_dataset.py --opt Options/RetinexFormer_SDSD_indoor.yml --weights pretrained_weights/SDSD_indoor.pth --dataset SDSD_indoor

# SDSD-outdoor
python3 Enhancement/test_from_dataset.py --opt Options/RetinexFormer_SDSD_outdoor.yml --weights pretrained_weights/SDSD_outdoor.pth --dataset SDSD_outdoor

# FiveK
python3 Enhancement/test_from_dataset.py --opt Options/RetinexFormer_FiveK.yml --weights pretrained_weights/FiveK.pth --dataset FiveK

# NTIRE
python3 Enhancement/test_from_dataset.py --opt Options/RetinexFormer_NTIRE.yml --weights pretrained_weights/NTIRE.pth --dataset NTIRE --self_ensemble

# MST_Plus_Plus trained with 4 GPUs on NTIRE 
python3 Enhancement/test_from_dataset.py --opt Options/MST_Plus_Plus_NTIRE_4x1800.yml --weights pretrained_weights/MST_Plus_Plus_4x1800.pth --dataset NTIRE --self_ensemble

# MST_Plus_Plus trained with 8 GPUs on NTIRE 
python3 Enhancement/test_from_dataset.py --opt Options/MST_Plus_Plus_NTIRE_8x1150.yml --weights pretrained_weights/MST_Plus_Plus_8x1150.pth --dataset NTIRE --self_ensemble
# LOL-v1
python3 Enhancement/test_from_dataset.py --opt Options/RetinexFormer_LOL_v1.yml --weights pretrained_weights/LOL_v1.pth --dataset LOL_v1 --GT_mean

# LOL-v2-real
python3 Enhancement/test_from_dataset.py --opt Options/RetinexFormer_LOL_v2_real.yml --weights pretrained_weights/LOL_v2_real.pth --dataset LOL_v2_real --GT_mean

# LOL-v2-synthetic
python3 Enhancement/test_from_dataset.py --opt Options/RetinexFormer_LOL_v2_synthetic.yml --weights pretrained_weights/LOL_v2_synthetic.pth --dataset LOL_v2_synthetic --GT_mean
from utils import my_summary
my_summary(RetinexFormer(), 256, 256, 3, 1)

 

4. Training

Feel free to check our training logs from Baidu Disk (code: cyh2) or Google Drive

We suggest you use the environment with pytorch 2 to train our model on the NTIRE 2024 dataset and the environment with pytorch 1.11 to train our model on other datasets.

# activate the enviroment
conda activate Retinexformer

# LOL-v1
python3 basicsr/train.py --opt Options/RetinexFormer_LOL_v1.yml

# LOL-v2-real
python3 basicsr/train.py --opt Options/RetinexFormer_LOL_v2_real.yml

# LOL-v2-synthetic
python3 basicsr/train.py --opt Options/RetinexFormer_LOL_v2_synthetic.yml

# SID
python3 basicsr/train.py --opt Options/RetinexFormer_SID.yml

# SMID
python3 basicsr/train.py --opt Options/RetinexFormer_SMID.yml

# SDSD-indoor
python3 basicsr/train.py --opt Options/RetinexFormer_SDSD_indoor.yml

# SDSD-outdoor
python3 basicsr/train.py --opt Options/RetinexFormer_SDSD_outdoor.yml

# FiveK
python3 basicsr/train.py --opt Options/RetinexFormer_FiveK.yml

Train our Retinexformer and MST++ with the distributed data parallel (DDP) strategy of pytorch on the NTIRE 2024 Low-Light Enhancement dataset. Please note that we use the mix-precision strategy in the training process, which is controlled by the bool hyperparameter use_amp in the config file.

# activate the enviroment
conda activate torch2

# Train Retinexformer with 8 GPUs on NTIRE
bash train_multigpu.sh Options/RetinexFormer_NTIRE_8x2000.yml 0,1,2,3,4,5,6,7 4321

# Train MST++ with 4 GPUs on NTIRE
bash train_multigpu.sh Options/RetinexFormer_NTIRE_4x1800.yml 0,1,2,3,4,5,6,7 4329

# Train MST++ with 8 GPUs on NTIRE
bash train_multigpu.sh Options/MST_Plus_Plus_NTIRE_8x1150.yml 0,1,2,3,4,5,6,7 4343

 

5. Citation

@InProceedings{Cai_2023_ICCV,
    author    = {Cai, Yuanhao and Bian, Hao and Lin, Jing and Wang, Haoqian and Timofte, Radu and Zhang, Yulun},
    title     = {Retinexformer: One-stage Retinex-based Transformer for Low-light Image Enhancement},
    booktitle = {Proceedings of the IEEE/CVF International Conference on Computer Vision (ICCV)},
    month     = {October},
    year      = {2023},
    pages     = {12504-12513}
}

@inproceedings{retinexformer,
  title={Retinexformer: One-stage Retinex-based Transformer for Low-light Image Enhancement},
  author={Yuanhao Cai and Hao Bian and Jing Lin and Haoqian Wang and Radu Timofte and Yulun Zhang},
  booktitle={ICCV},
  year={2023}
}

# MST++
@inproceedings{mst,
  title={Mask-guided Spectral-wise Transformer for Efficient Hyperspectral Image Reconstruction},
  author={Yuanhao Cai and Jing Lin and Xiaowan Hu and Haoqian Wang and Xin Yuan and Yulun Zhang and Radu Timofte and Luc Van Gool},
  booktitle={CVPR},
  year={2022}
}