Self-supervised Image Enhancement Network: Training with Low Light Images Only
About
This paper proposes a self-supervised low light image enhancement method based on deep learning. Inspired by information entropy theory and Retinex model, we proposed a maximum entropy based Retinex model. With this model, a very simple network can separate the illumination and reflectance, and the network can be trained with low light images only. We introduce a constraint that the maximum channel of the reflectance conforms to the maximum channel of the low light image and its entropy should be largest in our model to achieve self-supervised learning. Our model is very simple and does not rely on any well-designed data set (even one low light image can complete the training). The network only needs minute-level training to achieve image enhancement. It can be proved through experiments that the proposed method has reached the state-of-the-art in terms of processing speed and effect.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Low-light Image Enhancement | LOL (test) | PSNR19.13 | 97 | |
| Low-light Image Enhancement | MEF | NIQE4.477 | 39 | |
| Low-light Image Enhancement | DICM | NIQE4.588 | 39 | |
| Low-light Image Enhancement | VV | NIQE3.364 | 28 | |
| Low-light Image Enhancement | EnlightenGAN | NIQE4.872 | 8 | |
| Low-light Image Enhancement | ExDark | NIQE5.176 | 8 | |
| Low-light Image Enhancement | SCIE | NIQE3.978 | 8 | |
| Low-light Image Enhancement | COCO | NIQE4.947 | 8 |