Unsupervised Low-Light Image Enhancement Based on Generative Adversarial Network
Abstract
:1. Introduction
- We designed a novel generator for enhancing low-light images. Firstly, we designed a hybrid attention module consisting of a channel attention module and a pixel attention module. Secondly, we utilized the hybrid attention module as a sub-module within the design of the residual module. Thirdly, we designed a parallel dilated convolution module to capture multiscale information. Lastly, we combined the designed residual module with the hybrid attention module, and parallel dilated convolution module to construct the generative network. Additionally, we employed a skip connection to fuse shallow features with deep features, enhancing the representation of the generative network.
- We propose an adversarial network that includes two discriminators: a global discriminator and a local discriminator. The local discriminator is constructed using six standard convolution layers, while the global discriminator employs three different dilated convolution layers, skip connections, and four standard convolution layers.
- We propose an improved loss function by introducing pixel loss into the loss function of the generative adversarial network. It is beneficial for recovering detailed image information
2. Related Work
3. Proposed Methods
3.1. Proposed Generator
3.2. Proposed Discriminator
3.3. Proposed Loss Function
4. Simulation and Discussion
Algorithm 1. Training procedure for our proposed method. |
1: For K epochs do 2: For k(k is a hyperparameter, k = 1) steps do 3: Sample minibatch of m low-light image samples {z (1),…, z(m)} from low-light image domain. 4: Sample minibatch of m normal-light image samples {z (1),…, z(m)} from normal-light image domain. 5: Update the discriminator by Adam Optimizer: 7: Sample minibatch of m low-light image samples { z (1),…, z(m)} fromlow-light image domain. 8: Update the generator by Adam Optimizer: |
4.1. Datasets and Metrics
4.2. Ablation Study
4.3. No-Referenced Image Quality Assessment
4.4. Full-Referenced Image Quality Assessment
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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No_Attention | No_Parallel Dilated Conv | No_Cascaded Dilated Conv | No_Pixel Loss | Ours | |
---|---|---|---|---|---|
PSNR | 20.5918 | 23.3964 | 25.9701 | 26.1541 | 26.6451 |
SSIM | 0.7686 | 0.7761 | 0.8667 | 0.8771 | 0.8817 |
NIQE | 6.7748 | 5.2070 | 4.8803 | 4.9612 | 4.4719 |
BRISQUE | 25.3088 | 22.2576 | 21.5149 | 40.0626 | 21.2218 |
Alpha | LIME | CycleGAN | Retinex-Net | EnlightenGAN | Zero-DCE | Zero-DCE++ | Ours | |
---|---|---|---|---|---|---|---|---|
1st image | 6.9561 | 6.6348 | 7.5064 | 12.4557 | 5.2253 | 8.8149 | 7.8973 | 5.1815 |
2nd image | 7.1162 | 4.7842 | 5.8236 | 6.7309 | 3.6692 | 5.1637 | 4.5945 | 3.4426 |
3rd image | 8.2354 | 8.3674 | 6.5934 | 10.6873 | 5.2263 | 6.3784 | 6.1283 | 5.1637 |
4th image | 8.3671 | 6.3724 | 7.6354 | 11.3648 | 4.6992 | 4.4762 | 4.1164 | 3.9651 |
Average | 7.6687 | 6.5397 | 6.8897 | 10.3097 | 4.7050 | 6.2083 | 5.6841 | 4.4382 |
Alpha | LIME | CycleGAN | Retinex-Net | EnlightenGAN | Zero-DCE | Zero-DCE++ | Ours | |
---|---|---|---|---|---|---|---|---|
1st image | 42.6327 | 43.6249 | 38.6523 | 44.2361 | 30.4125 | 36.2578 | 33.6245 | 30.5261 |
2ndimage | 41.2961 | 40.4375 | 40.1263 | 48.2763 | 29.1547 | 30.1542 | 28.7163 | 20.5238 |
3rd image | 36.1284 | 37.9658 | 28.1267 | 38.1476 | 23.6321 | 29.3697 | 24.3698 | 22.9086 |
4th image | 39.6183 | 50.5563 | 36.2548 | 53.2174 | 35.2147 | 40.1236 | 29.7211 | 25.4236 |
Average | 39.9189 | 43.1461 | 35.7900 | 45.9694 | 29.6035 | 33.9763 | 29.1079 | 24.8455 |
Alpha | LIME | CycleGAN | Retinex-Net | EnlightenGAN | Zero-DCE | Zero-DCE++ | Ours | |
---|---|---|---|---|---|---|---|---|
NIQE | 8.8655 | 8.9884 | 8.8816 | 7.8564 | 5.2901 | 6.1564 | 5.7911 | 4.8656 |
BRISQUE | 41.0368 | 40.3652 | 39.6235 | 41.3498 | 30.2563 | 28.6392 | 24.3687 | 23.6987 |
Alpha | LIME | CycleGAN | Retinex-Net | EnlightenGAN | Zero-DCE | Zero-DCE++ | Ours | ||
---|---|---|---|---|---|---|---|---|---|
1st image | PSNR | 20.1381 | 19.8378 | 23.0964 | 15.9278 | 21.8685 | 15.9880 | 15.4431 | 24.1329 |
SSIM | 0.8032 | 0.7732 | 0.7944 | 0.7839 | 0.9213 | 0.8529 | 0.6098 | 0.9267 | |
NIQE | 5.9932 | 6.9635 | 7.2511 | 7.5961 | 4.9968 | 5.0166 | 4.9888 | 4.7602 | |
BRISQUE | 36.5827 | 34.5062 | 36.7823 | 28.1026 | 23.6384 | 26.8221 | 24.7335 | 23.0285 | |
2nd image | PSNR | 19.6382 | 17.9721 | 19.8103 | 13.2096 | 23.2018 | 16.5817 | 16.3813 | 27.3032 |
SSIM | 0.7886 | 0.7770 | 0.8515 | 0.7312 | 0.9208 | 0.8294 | 0.7320 | 0.9352 | |
NIQE | 7.6631 | 8.3652 | 8.2236 | 6.2358 | 3.9624 | 4.9968 | 4.6379 | 3.8891 | |
BRISQUE | 37.8260 | 36.5896 | 31.2014 | 24.1036 | 28.0457 | 28.0211 | 27.4125 | 24.1027 | |
3rd image | PSNR | 18.6357 | 17.3886 | 19.0584 | 15.8160 | 17.3886 | 17.2072 | 18.8322 | 20.5577 |
SSIM | 0.7081 | 0.6572 | 0.6837 | 0.6637 | 0.8802 | 0.7673 | 0.6311 | 0.8695 | |
NIQE | 9.6635 | 7.6354 | 9.6102 | 5.1632 | 5.1022 | 5.8906 | 5.1063 | 4.9924 | |
BRISQUE | 31.2569 | 30.1265 | 29.6321 | 29.3678 | 30.9519 | 37.2673 | 36.1859 | 28.6571 | |
Average | PSNR | 19.3764 | 18.3995 | 22.6550 | 14.9845 | 20.8196 | 16.5923 | 16.8855 | 23.9979 |
SSIM | 0.7815 | 0.7358 | 0.7765 | 0.7263 | 0.9074 | 0.8165 | 0.6576 | 0.9101 | |
NIQE | 8.9657 | 7.6547 | 8.3616 | 6.3317 | 4.6871 | 5.3013 | 4.9110 | 4.5472 | |
BRISQUE | 34.5632 | 33.7408 | 32.5386 | 29.1913 | 27.5453 | 30.7035 | 29.4440 | 25.2628 |
Alpha | LIME | CycleGAN | Retinex-Net | EnlightenGAN | Zero-DCE | Zero-DCE++ | Ours | |
PSNR | 17.3354 | 17.8337 | 21.1463 | 17.7947 | 23.9674 | 19.7008 | 18.8698 | 26.6451 |
SSIM | 0.7022 | 0.6321 | 0.8322 | 0.6257 | 0.8640 | 0.7416 | 0.6463 | 0.8817 |
NIQE | 8.9621 | 8.9673 | 8.1960 | 6.9928 | 4.8963 | 6.0023 | 5.3725 | 4.4719 |
BRISQUE | 39.6477 | 40.3188 | 30.3485 | 34.5698 | 23.2056 | 29.4853 | 24.8423 | 21.2218 |
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Yu, W.; Zhao, L.; Zhong, T. Unsupervised Low-Light Image Enhancement Based on Generative Adversarial Network. Entropy 2023, 25, 932. https://doi.org/10.3390/e25060932
Yu W, Zhao L, Zhong T. Unsupervised Low-Light Image Enhancement Based on Generative Adversarial Network. Entropy. 2023; 25(6):932. https://doi.org/10.3390/e25060932
Chicago/Turabian StyleYu, Wenshuo, Liquan Zhao, and Tie Zhong. 2023. "Unsupervised Low-Light Image Enhancement Based on Generative Adversarial Network" Entropy 25, no. 6: 932. https://doi.org/10.3390/e25060932
APA StyleYu, W., Zhao, L., & Zhong, T. (2023). Unsupervised Low-Light Image Enhancement Based on Generative Adversarial Network. Entropy, 25(6), 932. https://doi.org/10.3390/e25060932