Journal of Computer Applications ›› 2025, Vol. 45 ›› Issue (2): 601-609.DOI: 10.11772/j.issn.1001-9081.2024030276
• Multimedia computing and computer simulation • Previous Articles
Haiteng MENG, Xiaole ZHAO(), Tianrui LI
Received:
2024-03-18
Revised:
2024-04-30
Accepted:
2024-05-06
Online:
2024-06-06
Published:
2025-02-10
Contact:
Xiaole ZHAO
About author:
MENG Haiteng, born in 1999, M. S. candidate. His research interests include computer vision, image processing.Supported by:
通讯作者:
赵小乐
作者简介:
孟海腾(1999—),男,江苏徐州人,硕士研究生,CCF会员,主要研究方向:计算机视觉、图像处理基金资助:
CLC Number:
Haiteng MENG, Xiaole ZHAO, Tianrui LI. Lightweight image super-resolution reconstruction based on asymmetric information distillation network[J]. Journal of Computer Applications, 2025, 45(2): 601-609.
孟海腾, 赵小乐, 李天瑞. 基于非对称信息蒸馏网络的轻量级图像超分辨重建[J]. 《计算机应用》唯一官方网站, 2025, 45(2): 601-609.
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URL: https://www.joca.cn/EN/10.11772/j.issn.1001-9081.2024030276
模块名 | 输出特征大小 | 子模块名 | 子模块结构 |
---|---|---|---|
SFEM | 64×64 | Conv3 | 3×3,3 |
Conv3 | {3×3,26}×2 | ||
AIDB | 64×64 | HvConv | |
VhConv | |||
Conv1 | {1×1,26}×4 | ||
Conv1 | 1×1,52 | ||
IESA | 64×64 | Conv1 | 1×1,13 |
31×31 | Strided Conv | 3×3,13,s=2 | |
15×15 | Pooling | 2×2,s=2 | |
64×64 | DwConv3 | 3×3,13,g=13 | |
31×31 | DwConv3 | 3×3,13,g=13 | |
15×15 | DwConv3 | 3×3,13,g=13 | |
64×64 | Conv1 | 1×1,52 | |
UM | 64×64 | Conv3(U) | 3×3,3r2 |
Conv3 | 3×3,3 | ||
ASM | Conv1 | 1×1,24 | |
Conv1×3 | 1×3,24 | ||
Conv3×1 | 3×1,24 | ||
Conv1 | 1×1,12 |
Tab. 1 Detailed experimental parameters of AIDN model
模块名 | 输出特征大小 | 子模块名 | 子模块结构 |
---|---|---|---|
SFEM | 64×64 | Conv3 | 3×3,3 |
Conv3 | {3×3,26}×2 | ||
AIDB | 64×64 | HvConv | |
VhConv | |||
Conv1 | {1×1,26}×4 | ||
Conv1 | 1×1,52 | ||
IESA | 64×64 | Conv1 | 1×1,13 |
31×31 | Strided Conv | 3×3,13,s=2 | |
15×15 | Pooling | 2×2,s=2 | |
64×64 | DwConv3 | 3×3,13,g=13 | |
31×31 | DwConv3 | 3×3,13,g=13 | |
15×15 | DwConv3 | 3×3,13,g=13 | |
64×64 | Conv1 | 1×1,52 | |
UM | 64×64 | Conv3(U) | 3×3,3r2 |
Conv3 | 3×3,3 | ||
ASM | Conv1 | 1×1,24 | |
Conv1×3 | 1×3,24 | ||
Conv3×1 | 3×1,24 | ||
Conv1 | 1×1,12 |
模型名 | 参数量/ | Set5 | Set14 | B100 | Urban100 | Manga109 | |||||
---|---|---|---|---|---|---|---|---|---|---|---|
PSNR/dB | SSIM | PSNR/dB | SSIM | PSNR/dB | SSIM | PSNR/dB | SSIM | PSNR/dB | SSIM | ||
Bicubic | — | 33.66 | 0.929 9 | 30.24 | 0.868 8 | 29.56 | 0.843 1 | 26.88 | 0.840 3 | 30.80 | 0.933 9 |
SRCNN[ | 57 | 36.66 | 0.954 2 | 32.45 | 0.906 7 | 31.36 | 0.887 9 | 29.50 | 0.894 6 | 35.60 | 0.966 3 |
FSRCNN[ | 12 | 37.00 | 0.955 8 | 32.63 | 0.908 8 | 31.53 | 0.892 0 | 29.88 | 0.902 0 | 36.67 | 0.971 0 |
LapSRN[ | 813 | 37.52 | 0.959 1 | 33.08 | 0.913 0 | 31.08 | 0.895 0 | 30.42 | 0.910 1 | 37.27 | 0.974 0 |
MemNet[ | 677 | 37.78 | 0.959 7 | 33.28 | 0.914 2 | 32.08 | 0.897 8 | 31.31 | 0.919 5 | 37.72 | 0.974 0 |
IDN[ | 553 | 37.83 | 0.960 0 | 33.30 | 0.914 8 | 32.08 | 0.898 5 | 31.27 | 0.919 6 | 38.01 | 0.974 9 |
IMDN[ | 694 | 38.00 | 33.63 | 0.917 7 | 32.19 | 32.17 | 0.928 3 | 38.88 | 0.977 4 | ||
PAN[ | 261 | 38.00 | 0.918 1 | 0.899 7 | 32.01 | 38.70 | |||||
ShuffleMixer[ | 394 | 0.960 6 | 33.63 | 32.17 | 0.899 5 | 31.89 | 0.925 7 | 0.977 4 | |||
SAFMN[ | 228 | 38.00 | 33.54 | 0.917 7 | 32.16 | 0.899 5 | 31.84 | 0.925 6 | 38.71 | 0.977 1 | |
AIDN(本文) | 229 | 38.02 | 0.960 4 | 33.55 | 0.917 7 | 0.899 7 | 0.927 1 | 38.77 |
Tab. 2 Comparison of 2× results of different super-resolution networks on 5 benchmark datasets
模型名 | 参数量/ | Set5 | Set14 | B100 | Urban100 | Manga109 | |||||
---|---|---|---|---|---|---|---|---|---|---|---|
PSNR/dB | SSIM | PSNR/dB | SSIM | PSNR/dB | SSIM | PSNR/dB | SSIM | PSNR/dB | SSIM | ||
Bicubic | — | 33.66 | 0.929 9 | 30.24 | 0.868 8 | 29.56 | 0.843 1 | 26.88 | 0.840 3 | 30.80 | 0.933 9 |
SRCNN[ | 57 | 36.66 | 0.954 2 | 32.45 | 0.906 7 | 31.36 | 0.887 9 | 29.50 | 0.894 6 | 35.60 | 0.966 3 |
FSRCNN[ | 12 | 37.00 | 0.955 8 | 32.63 | 0.908 8 | 31.53 | 0.892 0 | 29.88 | 0.902 0 | 36.67 | 0.971 0 |
LapSRN[ | 813 | 37.52 | 0.959 1 | 33.08 | 0.913 0 | 31.08 | 0.895 0 | 30.42 | 0.910 1 | 37.27 | 0.974 0 |
MemNet[ | 677 | 37.78 | 0.959 7 | 33.28 | 0.914 2 | 32.08 | 0.897 8 | 31.31 | 0.919 5 | 37.72 | 0.974 0 |
IDN[ | 553 | 37.83 | 0.960 0 | 33.30 | 0.914 8 | 32.08 | 0.898 5 | 31.27 | 0.919 6 | 38.01 | 0.974 9 |
IMDN[ | 694 | 38.00 | 33.63 | 0.917 7 | 32.19 | 32.17 | 0.928 3 | 38.88 | 0.977 4 | ||
PAN[ | 261 | 38.00 | 0.918 1 | 0.899 7 | 32.01 | 38.70 | |||||
ShuffleMixer[ | 394 | 0.960 6 | 33.63 | 32.17 | 0.899 5 | 31.89 | 0.925 7 | 0.977 4 | |||
SAFMN[ | 228 | 38.00 | 33.54 | 0.917 7 | 32.16 | 0.899 5 | 31.84 | 0.925 6 | 38.71 | 0.977 1 | |
AIDN(本文) | 229 | 38.02 | 0.960 4 | 33.55 | 0.917 7 | 0.899 7 | 0.927 1 | 38.77 |
模型名 | 参数量/ | Set5 | Set14 | B100 | Urban100 | Manga109 | |||||
---|---|---|---|---|---|---|---|---|---|---|---|
PSNR/dB | SSIM | PSNR/dB | SSIM | PSNR/dB | SSIM | PSNR/dB | SSIM | PSNR/dB | SSIM | ||
Bicubic | — | 30.39 | 0.868 2 | 27.55 | 0.774 2 | 27.21 | 0.738 5 | 24.46 | 0.734 9 | 26.95 | 0.855 6 |
SRCNN[ | 57 | 32.75 | 0.909 0 | 29.28 | 0.820 9 | 28.41 | 0.786 3 | 26.24 | 0.798 9 | 30.69 | 0.917 0 |
FSRCNN[ | 12 | 33.16 | 0.914 0 | 29.43 | 0.824 2 | 28.53 | 0.791 0 | 26.43 | 0.808 0 | 30.98 | 0.921 2 |
MemNet[ | 677 | 34.09 | 0.924 8 | 30.01 | 0.835 0 | 28.96 | 0.800 1 | 27.56 | 0.837 6 | 32.51 | 0.936 9 |
IDN[ | 553 | 34.11 | 0.925 3 | 29.99 | 0.835 4 | 28.95 | 0.801 3 | 27.42 | 0.835 9 | 32.71 | 0.938 1 |
IMDN[ | 703 | 34.36 | 0.927 0 | 30.32 | 0.841 7 | 0.804 6 | 27.17 | 33.61 | |||
PAN[ | 261 | 0.927 2 | 30.37 | 29.12 | 0.849 8 | 33.69 | 0.944 8 | ||||
ShuffleMixer[ | 415 | 0.927 2 | 30.37 | 29.12 | 0.849 8 | 33.69 | 0.944 8 | ||||
SAFMN[ | 233 | 34.34 | 0.936 7 | 30.33 | 0.841 8 | 29.08 | 0.804 8 | 27.95 | 0.847 4 | 33.52 | 0.943 7 |
AIDN(本文) | 257 | 34.42 | 0.842 4 | 29.12 | 0.805 2 | 28.16 | 0.852 4 | 0.844 9 |
Tab. 3 Comparison of 3× results of different super-resolution networks on 5 benchmark datasets
模型名 | 参数量/ | Set5 | Set14 | B100 | Urban100 | Manga109 | |||||
---|---|---|---|---|---|---|---|---|---|---|---|
PSNR/dB | SSIM | PSNR/dB | SSIM | PSNR/dB | SSIM | PSNR/dB | SSIM | PSNR/dB | SSIM | ||
Bicubic | — | 30.39 | 0.868 2 | 27.55 | 0.774 2 | 27.21 | 0.738 5 | 24.46 | 0.734 9 | 26.95 | 0.855 6 |
SRCNN[ | 57 | 32.75 | 0.909 0 | 29.28 | 0.820 9 | 28.41 | 0.786 3 | 26.24 | 0.798 9 | 30.69 | 0.917 0 |
FSRCNN[ | 12 | 33.16 | 0.914 0 | 29.43 | 0.824 2 | 28.53 | 0.791 0 | 26.43 | 0.808 0 | 30.98 | 0.921 2 |
MemNet[ | 677 | 34.09 | 0.924 8 | 30.01 | 0.835 0 | 28.96 | 0.800 1 | 27.56 | 0.837 6 | 32.51 | 0.936 9 |
IDN[ | 553 | 34.11 | 0.925 3 | 29.99 | 0.835 4 | 28.95 | 0.801 3 | 27.42 | 0.835 9 | 32.71 | 0.938 1 |
IMDN[ | 703 | 34.36 | 0.927 0 | 30.32 | 0.841 7 | 0.804 6 | 27.17 | 33.61 | |||
PAN[ | 261 | 0.927 2 | 30.37 | 29.12 | 0.849 8 | 33.69 | 0.944 8 | ||||
ShuffleMixer[ | 415 | 0.927 2 | 30.37 | 29.12 | 0.849 8 | 33.69 | 0.944 8 | ||||
SAFMN[ | 233 | 34.34 | 0.936 7 | 30.33 | 0.841 8 | 29.08 | 0.804 8 | 27.95 | 0.847 4 | 33.52 | 0.943 7 |
AIDN(本文) | 257 | 34.42 | 0.842 4 | 29.12 | 0.805 2 | 28.16 | 0.852 4 | 0.844 9 |
模型名 | 参数量/ | Set5 | Set14 | B100 | Urban100 | Manga109 | |||||
---|---|---|---|---|---|---|---|---|---|---|---|
PSNR/dB | SSIM | PSNR/dB | SSIM | PSNR/dB | SSIM | PSNR/dB | SSIM | PSNR/dB | SSIM | ||
Bicubic | — | 28.42 | 0.810 4 | 26.00 | 0.702 7 | 25.96 | 0.667 5 | 23.14 | 0.657 7 | 24.89 | 0.786 6 |
SRCNN[ | 57 | 30.48 | 0.862 8 | 27.49 | 0.750 3 | 26.90 | 0.710 1 | 24.52 | 0.722 1 | 27.66 | 0.850 5 |
FSRCNN[ | 12 | 30.71 | 0.865 7 | 27.59 | 0.753 5 | 26.98 | 0.715 0 | 24.62 | 0.828 0 | 27.90 | 0.851 7 |
LapSRN[ | 813 | 31.54 | 0.885 0 | 28.19 | 0.772 0 | 27.32 | 0.728 0 | 25.21 | 0.756 0 | 29.09 | 0.884 5 |
MemNet[ | 677 | 31.74 | 0.889 3 | 28.26 | 0.772 3 | 27.40 | 0.728 1 | 25.50 | 0.763 0 | 29.42 | 0.894 2 |
IDN[ | 553 | 31.82 | 0.890 3 | 28.25 | 0.773 0 | 27.41 | 0.729 7 | 25.41 | 0.763 2 | 29.41 | 0.894 2 |
IMDN[ | 715 | 32.21 | 28.58 | 0.781 1 | 27.56 | 0.735 3 | 26.04 | 0.783 8 | 30.45 | 0.907 5 | |
PAN[ | 261 | 32.13 | 28.66 | 27.61 | 0.736 6 | 0.783 5 | 30.65 | 0.909 3 | |||
HPUN-S[ | 246 | 32.09 | 0.893 1 | 28.52 | 0.779 7 | 27.54 | 0.734 8 | 25.86 | 0.778 8 | 30.21 | 0.904 3 |
ShuffleMixer[ | 411 | 32.21 | 0.895 3 | 28.66 | 27.61 | 0.736 6 | 30.65 | 0.909 3 | |||
SAFMN[ | 240 | 28.60 | 0.781 3 | 25.97 | 0.780 9 | 30.43 | 0.909 3 | ||||
AIDN(本文) | 229 | 0.894 6 | 0.787 1 | 26.11 |
Tab. 4 Comparison of 4× results of different super-resolution networks on 5 benchmark datasets
模型名 | 参数量/ | Set5 | Set14 | B100 | Urban100 | Manga109 | |||||
---|---|---|---|---|---|---|---|---|---|---|---|
PSNR/dB | SSIM | PSNR/dB | SSIM | PSNR/dB | SSIM | PSNR/dB | SSIM | PSNR/dB | SSIM | ||
Bicubic | — | 28.42 | 0.810 4 | 26.00 | 0.702 7 | 25.96 | 0.667 5 | 23.14 | 0.657 7 | 24.89 | 0.786 6 |
SRCNN[ | 57 | 30.48 | 0.862 8 | 27.49 | 0.750 3 | 26.90 | 0.710 1 | 24.52 | 0.722 1 | 27.66 | 0.850 5 |
FSRCNN[ | 12 | 30.71 | 0.865 7 | 27.59 | 0.753 5 | 26.98 | 0.715 0 | 24.62 | 0.828 0 | 27.90 | 0.851 7 |
LapSRN[ | 813 | 31.54 | 0.885 0 | 28.19 | 0.772 0 | 27.32 | 0.728 0 | 25.21 | 0.756 0 | 29.09 | 0.884 5 |
MemNet[ | 677 | 31.74 | 0.889 3 | 28.26 | 0.772 3 | 27.40 | 0.728 1 | 25.50 | 0.763 0 | 29.42 | 0.894 2 |
IDN[ | 553 | 31.82 | 0.890 3 | 28.25 | 0.773 0 | 27.41 | 0.729 7 | 25.41 | 0.763 2 | 29.41 | 0.894 2 |
IMDN[ | 715 | 32.21 | 28.58 | 0.781 1 | 27.56 | 0.735 3 | 26.04 | 0.783 8 | 30.45 | 0.907 5 | |
PAN[ | 261 | 32.13 | 28.66 | 27.61 | 0.736 6 | 0.783 5 | 30.65 | 0.909 3 | |||
HPUN-S[ | 246 | 32.09 | 0.893 1 | 28.52 | 0.779 7 | 27.54 | 0.734 8 | 25.86 | 0.778 8 | 30.21 | 0.904 3 |
ShuffleMixer[ | 411 | 32.21 | 0.895 3 | 28.66 | 27.61 | 0.736 6 | 30.65 | 0.909 3 | |||
SAFMN[ | 240 | 28.60 | 0.781 3 | 25.97 | 0.780 9 | 30.43 | 0.909 3 | ||||
AIDN(本文) | 229 | 0.894 6 | 0.787 1 | 26.11 |
实验 序号 | 实验设置 | 模型 参数量 | PSNR/dB | |||
---|---|---|---|---|---|---|
ESA | IESA | edge | ASM | |||
1 | √ | × | × | × | 237 491 | 31.51 |
2 | × | √ | × | × | 225 323 | 31.55 |
3 | × | √ | √ | × | 225 404 | 31.56 |
4 | × | √ | × | √ | 229 439 | 32.10 |
5 | × | √ | √ | √ | 229 520 | 32.11 |
Tab. 5 Experimental results of 4x super-resolution ablation of AIDN on Set5 dataset
实验 序号 | 实验设置 | 模型 参数量 | PSNR/dB | |||
---|---|---|---|---|---|---|
ESA | IESA | edge | ASM | |||
1 | √ | × | × | × | 237 491 | 31.51 |
2 | × | √ | × | × | 225 323 | 31.55 |
3 | × | √ | √ | × | 225 404 | 31.56 |
4 | × | √ | × | √ | 229 439 | 32.10 |
5 | × | √ | √ | √ | 229 520 | 32.11 |
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