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Journals
International Journal of Advanced Network, Monitoring and Controls
Volume 7 (2022): Issue 4 (January 2022)
Open Access
Super-resolution Image Reconstruction Based on Double Regression Network Model
Jieyi Lv
Jieyi Lv
and
Zhongsheng Wang
Zhongsheng Wang
| May 26, 2023
International Journal of Advanced Network, Monitoring and Controls
Volume 7 (2022): Issue 4 (January 2022)
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Published Online:
May 26, 2023
Page range:
82 - 88
DOI:
https://doi.org/10.2478/ijanmc-2022-0039
Keywords
Super Resolution
,
Mapping Function
,
Deep Neural Network
,
Double Regression Model
© 2022 Jieyi Lv et al., published by Sciendo
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
Figure 1.
Composition of double regression model
Figure 2.
Super resolution reconstruction process
Figure 3.
Recursive learning
Figure 4.
Double magnification reconstruction comparison of each algorithm
Figure 5.
Comparison of four times magnification reconstruction of each algorithm
Comparison of the results of PSNR reconstruction by two times of each algorithm
Datasets
FSRCNN
SRGAN
ESRGAN
Ours
Set5
32.40
33.19
33.46
34.68
Set14
29.52
29.56
29.47
30.56
Bsd100
26.74
29.47
29.78
29.78
Comparison of SSIM results of four times reconstruction of each algorithm
Datasets
FSRCNN
SRGAN
ESRGAN
Ours
Set5
0.8657
0.8657
0.8569
0.6895
Set14
0.7564
0.7369
0.8697
0.7698
Bsd100
0.7156
0.6689
0.6783
0.6856