Low-Light Image and Video Enhancement: A
Comprehensive Survey and Beyond
Shen Zheng, Yiling Ma, Jinqian Pan, Changjie Lu, Gaurav Gupta
- 2024/1/1: We update the arXiv version with important revisions.
- 2023/4/16: The enhanced images and the metric scripts have been uploaded.
- 2023/3/24: The Night Wenzhou Dataset has been uploaded.
- 2023/2/8: The arXiv has been updated. The current version contains 21 pages, 9 tables, and 25 figures!
- Present a comprehensive survey of low-light image and videeo enhancement (LLIE).
- Propose SICE_Grad and SICE_Mix image datasets to represent complex mixed over-/under-exposed scenes.
- Introduce Night Wenzhou video dataset that features fast-moving aerial scenes and streetscapes with varied illuminations and degradations.
Traditional Learning | Deep Learning |
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SICE_Grad and SICE_Mix [Download] | Night Wenzhou [Download] |
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PIE (TIP 2015) [paper] [Python]
- A Probabilistic Method for Image Enhancement With Simultaneous Illumination and Reflectance Estimation
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LIME (TIP 2016) [paper] [Python]
- LIME: Low-Light Image Enhancement via Illumination Map Estimation
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LLNet (PR 2017) [paper] [Theano]
- LLNet: A Deep Autoencoder Approach to Natural Low-light Image Enhancement
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MBLLEN (BMVC 2017) [paper] [Keras]
- MBLLEN: Low-light Image/Video Enhancement Using CNNs
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LightenNet (PRL 2018) [paper] [MATLAB]
- LightenNet: A Convolutional Neural Network for weakly illuminated image enhancement
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Retinex-Net (BMVC 2018) [paper] [TensorFlow]
- Deep Retinex Decomposition for Low-Light Enhancement
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SID (CVPR 2018) [paper] [TensorFlow]
- Learning to See in the Dark
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DeepUPE (CVPR 2019) [paper] [TensorFlow]
- Underexposed Photo Enhancement using Deep Illumination Estimation
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EEMEFN (AAAI 2019) [paper] [TensorFlow]
- EEMEFN: Low-Light Image Enhancement via Edge-Enhanced Multi-Exposure Fusion Network
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ExCNet (ACMMM 2019) [paper] [Tensorflow ]
- Zero-shot restoration of back-lit images using deep internal learning
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KinD (ACMMM 2019) [paper] [TensorFlow]
- Kindling the darkness: A practical low-light image enhancer
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Zero-DCE (CVPR 2020) [paper] [PyTorch]
- Zero-reference deep curve estimation for low-light image enhancement
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DRBN (CVPR 2020) [paper] [PyTorch]
- From Fidelity to Perceptual Quality: A Semi-Supervised Approach for Low-Light Image Enhancement
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Xu et al. (CVPR 2020) [paper] [PyTorch]
- Learning to Restore Low-Light Images via Decomposition-and-Enhancement
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DLN (TIP 2020) [paper] [PyTorch]
- Lightening network for low-light image enhancement
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DeepLPF (CVPR 2020) [paper] [PyTorch]
- Deep Local Parametric Filters for Image Enhancement
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EnlightenGAN (TIP 2021) [paper] [PyTorch]
- EnlightenGAN: Deep Light Enhancement without Paired Supervision
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KinD++ (IJCV 2021) [paper] [TensorFlow]
- Beyond Brightening Low-light Images
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Zero-DCE++ (TPAMI 2021) [paper] [PyTorch]
- Learning to enhance low-light image via zero-reference deep curve estimation
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Zhang et al. (CVPR 2021) [paper] [PyTorch]
- Learning Temporal Consistency for Low Light Video Enhancement from Single Images
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RUAS (CVPR 2021) [paper] [PyTorch]
- Retinex-inspired Unrolling with Cooperative Prior Architecture Search for Low-light Image Enhancement
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UTVNet (ICCV 2021) [paper] [PyTorch]
- UTVNet: Adaptive Unfolding Total Variation Network for Low-Light Image Enhancement
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SDSD (ICCV 2021) [paper] [PyTorch]
- Seeing Dynamic Scene in the Dark: A High-Quality Video Dataset with Mechatronic Alignment
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RetinexDIP (TCSVT 2021) [paper] [PyTorch]
- RetinexDIP: A Unified Deep Framework for Low-light Image Enhancement
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SGZ (WACV 2022) [paper] [PyTorch]
- Semantic-Guided Zero-Shot Learning for Low-Light Image/Video Enhancement
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LLFlow (AAAI 2022) [paper] [PyTorch]
- Low-Light Image Enhancement with Normalizing Flow
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SNR-Aware (CVPR 2022) [paper] [PyTorch]
- SNR-Aware Low-light Image Enhancement
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SCI (CVPR 2022) [paper] [PyTorch]
- Toward Fast, Flexible, and Robust Low-Light Image Enhancement
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URetinex-Net (CVPR 2022) [paper] [PyTorch]
- URetinex-Net: Retinex-based Deep Unfolding Network for Low-light Image Enhancement
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Dong et al. (CVPR 2022) [paper] [PyTorch]
- Abandoning the Bayer-Filter to See in the Dark
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MAXIM (CVPR 2022) [paper] [Jax]
- MAXIM: Multi-Axis MLP for Image Processing
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BIPNet (CVPR 2022) [paper] [PyTorch]
- Burst Image Restoration and Enhancement
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LCDPNet (ECCV 2022) [paper] [PyTorch]
- Local Color Distributions Prior for Image Enhancement
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IAT (BMVC 2022) [paper] [PyTorch]
- You Only Need 90K Parameters to Adapt Light: A Light Weight Transformer for Image Enhancement and Exposure Correction
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NPE, LIME, MEF, DICM, VV [link]
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LOL [link]
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VE-LOL [link]
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ACDC [link]
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DCS [link]
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DarkFace [link]
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ExDark [link]
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SICE [link]
- Enhanced images for all baselines are here
- User Study
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IEEE [paper]
- An experiment-based review of low-light image enhancement methods
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IJCV 2021 [paper]
- Benchmarking low-light image enhancement and beyond
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TPAMI 2021 [paper]
- Low-Light Image and Video Enhancement Using Deep Learning: A Survey
If you find this repository helpful, please cite our paper.
@article{zheng2022low,
title={Low-Light Image and Video Enhancement: A Comprehensive Survey and Beyond},
author={Zheng, Shen and Ma, Yiling and Pan, Jinqian and Lu, Changjie and Gupta, Gaurav},
journal={arXiv preprint arXiv:2212.10772},
year={2022}
}