Laser Image Enhancement Algorithm Based on Improved EnlightenGAN
Abstract
:1. Introduction
- The algorithm is optimized and improved based on the EnlightenGAN model, and its loss function is redesigned to improve the generalization ability and enhancement effect of the model.
- A deep connection between the global discriminator and the local discriminator is established on the original structure of the EnlightenGAN model, allowing the global loss of the global discriminator to better serve the local optimization of the local discriminator.
- A new self-regularized attention mechanism applicable to laser images is established. The convolution mode of downsampling is improved to fuse the attention features and the original image features using residuals.
2. Proposed Algorithm
2.1. Global–Local Discriminator
2.2. U-Net Generator Guided with Self-regularized Attention
3. Model Improvement
3.1. Limitations and Ideas
3.1.1. The Global Discriminator Is Not Related to the Local Discriminator
3.1.2. The Self-regularized Attention Is Inconsistent with the Laser Images
3.1.3. Refine the Modulus of the Dark Channel
3.2. Strong Connection between Global Discriminators and Local Discriminators
3.3. Down-sampling Convolution Module Fitting
3.4. Self-regularized Attention Mechanism
4. Experiment and Analysis
4.1. Experiment Design
4.1.1. Experimental Data and Parameter Tuning
4.1.2. Experimental Setting
4.2. Experimentally Measured Indicators
4.2.1. NIQE
4.2.2. SSIM
4.2.3. PSNR
4.3. Ablation Experiment
4.4. Comparison Experiment
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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Hardware or Software | Technical Parameters |
---|---|
operating system | Window 10 × 64 Home |
GPU | NVIDIA GeForce RTX-3090 |
CPU | Intel(R) Xeon(R) Silver 4116 |
memory | 32 GB |
deep learning libraries | Pytorch |
programming language | Python |
NIQE | Without Threshold | Without Connection | Without Down-Sampling | EnlightenGAN+ |
tree | 13.4 | 14.5 | 13.1 | 12.4 |
UAV | 23.6 | 25.8 | 24.8 | 22.5 |
wall | 13.7 | 15.6 | 14.3 | 12.6 |
PSNR | Without threshold | Without connection | Without down-sampling | EnlightenGAN+ |
tree | 26.5 | 23.2 | 25.9 | 28.7 |
UAV | 37.3 | 30.8 | 38.4 | 42.8 |
wall | 27.1 | 26.3 | 27.3 | 28.9 |
SSIM | Without threshold | Without connection | Without down-sampling | EnlightenGAN+ |
tree | 0.43 | 0.24 | 0.36 | 0.44 |
UAV | 0.84 | 0.57 | 0.80 | 0.95 |
wall | 0.43 | 0.36 | 0.41 | 0.48 |
NIQE | CycleGan | LLNET | RetinexNet | EnlightenGAN | EnlightenGAN+ |
tree | 16.8 | 13.8 | 12.3 | 13.7 | 12.6 |
UAV | 25.1 | 24.1 | 23.1 | 24.4 | 22.7 |
wall | 13.5 | 13.9 | 14.2 | 13.5 | 12.4 |
PSNR | CycleGan | LLNET | RetinexNet | EnlightenGAN | EnlightenGAN+ |
tree | 27.1 | 26.2 | 26.9 | 27.4 | 27.7 |
UAV | 28.3 | 31.8 | 39.4 | 41.8 | 42.5 |
wall | 28.1 | 28.1 | 27.8 | 28.9 | 28.6 |
SSIM | CycleGan | LLNET | RetinexNet | EnlightenGAN | EnlightenGAN+ |
tree | 0.48 | 0.66 | 0.36 | 0.35 | 0.46 |
UAV | 0.26 | 0.29 | 0.80 | 0.95 | 0.96 |
wall | 0.21 | 0.18 | 0.41 | 0.44 | 0.50 |
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Share and Cite
Fan, Y.; Wang, Y.; Feng, K.; Liu, Y.; Jiang, Y.; Xie, J.; Niu, Y.; Wang, H. Laser Image Enhancement Algorithm Based on Improved EnlightenGAN. Electronics 2023, 12, 2081. https://doi.org/10.3390/electronics12092081
Fan Y, Wang Y, Feng K, Liu Y, Jiang Y, Xie J, Niu Y, Wang H. Laser Image Enhancement Algorithm Based on Improved EnlightenGAN. Electronics. 2023; 12(9):2081. https://doi.org/10.3390/electronics12092081
Chicago/Turabian StyleFan, Youchen, Yitong Wang, Kai Feng, Yuntian Liu, Yawen Jiang, Jiaxuan Xie, Yufei Niu, and Hongyan Wang. 2023. "Laser Image Enhancement Algorithm Based on Improved EnlightenGAN" Electronics 12, no. 9: 2081. https://doi.org/10.3390/electronics12092081
APA StyleFan, Y., Wang, Y., Feng, K., Liu, Y., Jiang, Y., Xie, J., Niu, Y., & Wang, H. (2023). Laser Image Enhancement Algorithm Based on Improved EnlightenGAN. Electronics, 12(9), 2081. https://doi.org/10.3390/electronics12092081