Systems Engineering and Electronics ›› 2026, Vol. 48 ›› Issue (1): 12-21.doi: 10.12305/j.issn.1001-506X.2026.01.02
• Electronic Technology • Previous Articles Next Articles
Yugang BAO(
), Haoxiang JIA, Danfeng ZHAO
Received:2024-09-15
Online:2026-01-25
Published:2026-02-11
Contact:
Yugang BAO
E-mail:baoyugang21@163.com
CLC Number:
Yugang BAO, Haoxiang JIA, Danfeng ZHAO. Single image raindrop removal model based on high-order recursive network[J]. Systems Engineering and Electronics, 2026, 48(1): 12-21.
Table 1
Experimental results of dual-scale attention residual modules with different structures"
| 模块结构 | Test_A | Test_B | ||||
| PSNR/dB | SSIM | PSNR/dB | SSIM | |||
| 标准卷积(3,3) | 25.11 | 0.883 | 22.89 | 0.785 | ||
| 标准卷积(3,5) | 25.33 | 0.883 | 22.93 | 0.783 | ||
| 单尺度组卷积(1,1) | 26.51 | 0.895 | 23.46 | 0.793 | ||
| 单尺度组卷积(3,3) | 31.11 | 0.931 | 25.89 | 0.820 | ||
| 单尺度组卷积(5,5) | 31.16 | 0.932 | 25.90 | 0.822 | ||
| 双尺度组卷积(1,3) | 30.70 | 0.929 | 25.76 | 0.819 | ||
| 双尺度组卷积(1,5) | 31.25 | 0.933 | 26.03 | 0.823 | ||
| 双尺度组卷积(3,5) | 31.41 | 0.934 | 26.17 | 0.824 | ||
Table 2
Experimental results of high-order recursive feature transfer mechanism with different hyperparameters"
| 超参数组合 | Test_A | Test_B | |||
| PSNR/dB | SSIM | PSNR/dB | SSIM | ||
| R1=1,R2=1 | 25.09 | 0.815 | 22.39 | 0.726 | |
| R1=1,R2=2 | 21.37 | 0.642 | 19.80 | 0.594 | |
| R1=1,R2=3 | 17.94 | 0.488 | 17.42 | 0.477 | |
| R1=2,R2=1 | 30.61 | 0.928 | 25.92 | 0.820 | |
| R1=2,R2=2 | 31.41 | 0.934 | 26.17 | 0.824 | |
| R1=2,R2=3 | 30.70 | 0.932 | 25.75 | 0.822 | |
| R1=3,R2=1 | 30.28 | 0.924 | 25.73 | 0.816 | |
| R1=3,R2=2 | 30.96 | 0.928 | 26.04 | 0.820 | |
| R1=3,R2=3 | 30.78 | 0.928 | 25.93 | 0.821 | |
Table 4
Quantitative comparison of raindrop removal results with different algorithms"
| 模型 | Test_A | Test_B | |||
| PSNR/dB | SSIM | PSNR/dB | SSIM | ||
| ATT-GAN[ | 24.91 | 0.884 | 24.92 | 0.809 | |
| TransWeather[ | 28.83 | 0.911 | — | — | |
| AG-GAN[ | 25.09 | 0.822 | 22.72 | 0.738 | |
| SA-GAN[ | 25.56 | 0.847 | 22.77 | 0.753 | |
| DuRN-S-P[ | 28.07 | 0.887 | 24.65 | 0.824 | |
| All-in-One[ | 23.41 | 0.872 | — | — | |
| D-DAM[ | 30.12 | 0.926 | — | — | |
| Two-stage[ | 30.12 | 0.910 | 24.86 | 0.803 | |
| MANAS[ | 28.88 | 0.907 | 23.66 | 0.787 | |
| DTN[ | 28.28 | 0.905 | 24.96 | 0.809 | |
| QPC-EPG[ | 29.48 | 0.913 | — | — | |
| 本文模型 | 31.41 | 0.934 | 26.17 | 0.824 | |
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