Abstract

Deep learning-based methods have achieved remarkable success in image restoration and enhancement, but are they still competitive when there is a lack of paired training data? As one such example, this paper explores the low-light image enhancement problem, where in practice it is extremely challenging to simultaneously take a low-light and a normal-light photo of the same visual scene. We propose a highly effective unsupervised generative adversarial network, dubbed EnlightenGAN, that can be trained without low/normal-light image pairs, yet proves to generalize very well on various real-world test images. Instead of supervising the learning using ground truth data, we propose to regularize the unpaired training using the information extracted from the input itself, and benchmark a series of innovations for the low-light image enhancement problem, including a global-local discriminator structure, a self-regularized perceptual loss fusion, and the attention mechanism. Through extensive experiments, our proposed approach outperforms recent methods under a variety of metrics in terms of visual quality and subjective user study. Thanks to the great flexibility brought by unpaired training, EnlightenGAN is demonstrated to be easily adaptable to enhancing real-world images from various domains. Our codes and pre-trained models are available at: https://github.com/VITA-Group/EnlightenGAN.

Keywords

Artificial intelligenceComputer scienceDiscriminatorBenchmark (surveying)Flexibility (engineering)Ground truthDeep learningComputer visionImage (mathematics)Image fusionPerceptionPattern recognition (psychology)Mathematics

Affiliated Institutions

Related Publications

Publication Info

Year
2021
Type
article
Volume
30
Pages
2340-2349
Citations
2029
Access
Closed

Social Impact

Social media, news, blog, policy document mentions

Citation Metrics

2029
OpenAlex
315
Influential
1870
CrossRef

Cite This

Yifan Jiang, Xinyu Gong, Ding Liu et al. (2021). EnlightenGAN: Deep Light Enhancement Without Paired Supervision. IEEE Transactions on Image Processing , 30 , 2340-2349. https://doi.org/10.1109/tip.2021.3051462

Identifiers

DOI
10.1109/tip.2021.3051462
PMID
33481709
arXiv
1906.06972

Data Quality

Data completeness: 84%