| Literature DB >> 29649147 |
Zhenzhen Yang1,2, Zhen Yang3,4, Guan Gui5,6.
Abstract
Blurred image restoration poses a great challenge under the non-Gaussian noise environments in various communication systems. In order to restore images from blur and alpha-stable noise while also preserving their edges, this paper proposes a variational method to restore the blurred images with alpha-stable noises based on the property of the meridian distribution and the total variation (TV). Since the variational model is non-convex, it cannot guarantee a global optimal solution. To overcome this drawback, we also incorporate an additional penalty term into the deblurring and denoising model and propose a strictly convex variational method. Due to the convexity of our model, the primal-dual algorithm is adopted to solve this convex variational problem. Our simulation results validate the proposed method.Entities:
Keywords: alpha-stable noise; image deblurring; primal-dual algorithm; total variational; variational method
Year: 2018 PMID: 29649147 PMCID: PMC5948533 DOI: 10.3390/s18041175
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Probability density functions (PDFs) of alpha-stable distributions with different values of .
Figure 2Different noisy images.
Figure 3Performances of the noisy image and the recovered images at different alpha parameters.
The PSNR (dB)/SSIM for noisy images and recovered images.
| Models | Different Test Images | ||
|---|---|---|---|
| Cameraman | Peppers | Lena | |
| Noise | 18.218/0.351 | 18.463/0.463 | 18.372/0.458 |
| Our proposed | 31.772/ 0.674 | 32.869/ 0.856 | 32.571/ 0.849 |
| TVL1 [ | 28.936/0.623 | 32.383/0.838 | 31.959/0.823 |
| Cauchy [ | 28.825/0.621 | 32.287/0.834 | 31.853/0.821 |
| Meridian filter [ | 26.883/0.587 | 30.612/0.812 | 30.279/0.801 |
Figure 4Performances of the blur and noisy images and the recovered images at different tail parameters alpha.
Figure 5Recovered Phantom images from different methods.
Figure 6Recovered Boat images from different methods.
Figure 7Recovered Fruits images from different methods.
Figure 8The magnified local regions of the recovered Fruits images from different methods.
The PSNR (dB)/SSIM for blurred and noisy images and recovered images.
| Models | Different Test Images | ||
|---|---|---|---|
| Cameraman | Peppers | Lena | |
| Blur and Noise | 17.556/0.254 | 18.048/0.391 | 18.006/0.389 |
| Our proposed | 28.327/0.533 | 29.872/0.766 | 29.667/ 0.762 |
| TVL1 [ | 27.283/0.501 | 29.247/0.739 | 28.971/0.736 |
| Cauchy [ | 26.244/0.472 | 29.201/0.724 | 28.583/0.721 |
Different image quality metrics for blurred and noisy Phantom images and recovered images.
| Models | Different Quality Metrics | |||
|---|---|---|---|---|
| SSIM | MS-SSIM | FSIM | PSNR | |
| Blur and Noise | 0.323 | 0.741 | 0.592 | 18.281 |
| Our proposed | 0.981 | 0.997 | 0.985 | 34.623 |
| TVL1 [ | 0.959 | 0.994 | 0.921 | 30.748 |
| Cauchy [ | 0.918 | 983 | 0.894 | 30.292 |