| Literature DB >> 30096891 |
Kun Liu1, Linyuan He2, Shiping Ma3, Shan Gao4, Duyan Bi5.
Abstract
To solve the problems of color distortion and structure blurring in images acquired by sensors during bad weather, an image dehazing algorithm based on feature learning is put forward to improve the quality of sensor images. First, we extracted the multiscale structure features of the haze images by sparse coding and the various haze-related color features simultaneously. Then, the generative adversarial network (GAN) was used for sample training to explore the mapping relationship between different features and the scene transmission. Finally, the final haze-free image was obtained according to the degradation model. Experimental results show that the method has obvious advantages in its detail recovery and color retention. In addition, it effectively improves the quality of sensor images.Entities:
Keywords: feature learning; generative adversarial networks; image dehazing; sparse coding
Year: 2018 PMID: 30096891 PMCID: PMC6111301 DOI: 10.3390/s18082606
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Degradation model.
Figure 2The formation of haze images.
Figure 3The flow of our method.
Figure 4The DCP color feature maps.
Figure 5Dictionary training.
Figure 6Dictionary training.
Figure 7the structure feature maps with different λ.
Figure 8The generative network.
Figure 9The adversarial networks.
Figure 10A comparison of the transmission.
Figure 11A comparison in detail recovery.
Figure 12A comparison of color preservation.
Figure 13A comparison of synthetic images.
The information entropy from images shown in Figure 12.
| Haze Image | Zhu | Tang | Berman | He | Our |
|---|---|---|---|---|---|
| Image 1 | 8.432 | 8.541 | 7.582 | 8.725 | 9.451 |
| Image 2 | 8.626 | 7.896 | 6.750 | 8.086 | 9.275 |
| Image 3 | 8.241 | 8.452 | 8.527 | 9.103 | 9.263 |
The information entropy from images shown in Figure 13.
| Haze Image | He | Cai | Chen | Ren | Our |
|---|---|---|---|---|---|
| Image 1 | 7.2846 | 6.8753 | 6.7152 | 5.9875 | 7.4783 |
| Image 2 | 7.1342 | 6.7883 | 7.2936 | 6.9983 | 7.4982 |
| Image 3 | 7.4568 | 7.3512 | 7.6589 | 7.4537 | 7.9375 |
| Image 4 | 7.6639 | 7.5697 | 6.2589 | 7.2358 | 7.8165 |
The PSNR from images shown in Figure 13.
| Haze Image | He | Cai | Chen | Ren | Our |
|---|---|---|---|---|---|
| Image 1 | 11.1765 | 14.2586 | 10.5896 | 10.1568 | 16.8974 |
| Image 2 | 17.6538 | 15.3692 | 18.5693 | 14.2568 | 19.5683 |
| Image 3 | 14.9577 | 17.6598 | 17.2563 | 16.8593 | 17.5836 |
| Image 4 | 22.0103 | 15.6984 | 15.1750 | 19.9872 | 21.2258 |
Figure 14A comparison of MMSE and SSIM in Figure 13.
The execution time of different size of images.
| Image Size | He | Cai | Chen | Ren | Our |
|---|---|---|---|---|---|
| 440 × 320 | 9.563 s | 3.124 s | 50.432 s | 1.947 s | 5.016 s |
| 670 × 480 | 11.768 s | 4.598 s | 106.398 s | 3.685 s | 6.697 s |
| 1024 × 768 | 35.269 s | 8.796 s | 180.148 s | 5.984 s | 10.896 s |
| 1430 × 1024 | 72.531 s | 20.015 s | 250.654 s | 11.369 | 22.573 s |