| Literature DB >> 35270992 |
Yang Bai1,2,3, Zheng Tan1,3, Qunbo Lv1,2,3, Min Huang1,2,3.
Abstract
An iterative image restoration algorithm, directed at the image deblurring problem and based on the concept of long- and short-exposure deblurring, was proposed under the image deconvolution framework by investigating the imaging principle and existing algorithms, thus realizing the restoration of degraded images. The effective priori side information provided by the short-exposure image was utilized to improve the accuracy of kernel estimation, and then increased the effect of image restoration. For the kernel estimation, a priori filtering non-dimensional Gaussianity measure (BID-PFNGM) regularization term was raised, and the fidelity term was corrected using short-exposure image information, thus improving the kernel estimation accuracy. For the image restoration, a P norm-constrained relative gradient regularization term constraint model was put forward, and the restoration result realizing both image edge preservation and texture restoration effects was acquired through the further processing of the model results. The experimental results prove that, in comparison with other algorithms, the proposed algorithm has a better restoration effect.Entities:
Keywords: kernel estimation; long-exposure image; short-exposure image
Mesh:
Year: 2022 PMID: 35270992 PMCID: PMC8915001 DOI: 10.3390/s22051846
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Structure flow chart.
Figure 2Flow chart of the kernel estimation model in the example layer.
Figure 3The matrix of examples: (a) template; (b) target; (c) bilateral filter; and (d) joint bilateral filter.
Iterative estimation algorithm flow of kernel final.
| The Steps of the Flow |
|---|
| Input: |
| 1. Conduct image d-sampling and establish an image pyramid consisting of |
| 2. Estimate the convolution kernel at the current layer. |
| 3. Update the fidelity term and regularization term through the united filtering algorithm. |
| 4. Estimate the iterative image. |
| 5. Estimate the convolution kernel. |
| 6. Interpolate both kernel and image and extend to the next layer and repeat Step 2. |
| 7. End the estimation and return to kernel |
Figure 4The kernel estimate result of (a) original kernel; (b) literature [11] algorithm result; (c) literature [24] algorithm result; (d) this paper; (e) normalized SSIM with [24]; (f)normalized PSNR with [24].
Kernel estimation quality evaluation table.
| Test Image | Evaluation | The Algorithm in the Literature [ | The Algorithm in the Literature [ | Proposed Algorithm |
|---|---|---|---|---|
| Convolutional kernel restoration result | SSIM | 0.6212 | 0.7835 | 0.8014 |
| PSNR | 15.6289 | 16.3289 | 17.6426 |
Deconvolutional algorithm flow based on long- and short-exposure.
| Deconvolutional Algorithm Flow Based on Long- and Short-Exposure |
|---|
| Input: |
| 1. Calculate the initial value of regularization term |
| 2. Iteratively solve Equation (15) to acquire the initial solution |
| 3. Calculate the result of the RRL algorithm “ |
| 4. Calculate the result of GCRL algorithm “ |
| 5. Calculate the image details “ |
Final result of RGO deblur and [27].
| Test Image | Evaluation | Algorithm in | Proposed Algorithm |
|---|---|---|---|
| Convolutional kernel | PSNR | 26.2330 | 26.5231 |
| SSIM | 0.7519 | 0.7707 |
Figure 5Comparison of iteration: (a) PSNR result of difference; (b) SSIM result.
Figure 6Remote image restoration: (a) blurred image; (b) local blurred image; (c) local Scheme 11. algorithm restored image; (e) local [27] algorithm restored image; (f) local restoration result of this algorithm; (g) the kernel estimated by this paper.
Final result of simulation experiment.
| Test Image | Evaluation | Algorithm in | Algorithm in | Proposed |
|---|---|---|---|---|
| Jet | SSIM | 0.9768 | 0.9892 | 0.9992 |
| PSNR | 25.4328 | 25.4251 | 26.8518 |
Figure 7The Levin library; (a) the original images from Levin library; (b) kernels.
Final results of total PSNR.
| Test Image | Algorithm in the | Algorithm in the | Proposed |
|---|---|---|---|
| Image 1 | 144.4002 | 145.6224 | 159.2353 |
| Image 2 | 144.8377 | 152.0045 | 157.8592 |
| Image 3 | 140.7298 | 147.0867 | 153.9975 |
| Image 4 | 117.0562 | 143.5941 | 144.8717 |
Final results of total PSNR.
| Test Image | Algorithm in the | Algorithm in the | Proposed |
|---|---|---|---|
| Image 1 | 6.3098 | 6.7155 | 6.7284 |
| Image 2 | 6.6004 | 6.6171 | 6.6784 |
| Image 3 | 6.3357 | 6.7661 | 6.8571 |
| Image 4 | 4.3364 | 6.3227 | 6.5260 |
Figure 8Real image restored experiment; (a) blurred image; (b) blurred image part; (c) Scheme 11. (e) algorithm restored image in [17]; (f) this paper; (g) kernel by proposed.
Final results of the no. 1 experiment.
| Test Image | Evaluation Criterion | Algorithm in the Literature [ | Algorithm in the Literature [ | Proposed |
|---|---|---|---|---|
| Bottle | NIQE | 5.3634 | 6.6016 | 4.4486 |
| Average Gradient | 7.5376 | 5.0055 | 10.9265 | |
| CPBD | 0.4962 | 0.2182 | 0.5753 |
Final results of the no. 2 experiment.
| Test Image | Evaluation | Algorithm in | Algorithm in | Proposed |
|---|---|---|---|---|
| Bottle | NIQE | 4.3606 | 4.7263 | 4.1259 |
| Average Gradient | 3.6899 | 3.6745 | 4.2400 | |
| CPBDM | 0.4962 | 0.2182 | 0.5753 |
Figure 9Real image results, the important part of the image comprises the Chinese characters as shown in (l): (a) blurred image; (b) short exposure image; (c) algorithm restored image in [27]; (d) algorithm restored image in [11]; (e) the restoration result of this algorithm; (f) result of kernel; (g) blurred image; (h) short exposure image; (i) algorithm restored image in [27]; (j) algorithm restored image in [11]; (k) algorithm proposed in this paper; (l) details of the Chinese characters.
Figure 10Edge image restoration results: (a) blurred image; (b) enlarged blurred image; (c) original image; (d) enlarged results; and (e) MTF comparison.