| Literature DB >> 35455153 |
Huaijuan Zang1, Guoan Cheng1, Zhipeng Duan1, Ying Zhao1, Shu Zhan1.
Abstract
The development of display technology has continuously increased the requirements for image resolution. However, the imaging systems of many cameras are limited by their physical conditions, and the image resolution is often restrictive. Recently, several models based on deep convolutional neural network (CNN) have gained significant performance for image super-resolution (SR), while extensive memory consumption and computation overhead hinder practical applications. For this purpose, we present a lightweight network that automatically searches dense connection (ASDCN) for image super-resolution (SR), which effectively reduces redundancy in dense connection and focuses on more valuable features. We employ neural architecture search (NAS) to model the searching of dense connections. Qualitative and quantitative experiments on five public datasets show that our derived model achieves superior performance over the state-of-the-art models.Entities:
Keywords: dense connection; neural architecture search; single image super-resolution
Year: 2022 PMID: 35455153 PMCID: PMC9030154 DOI: 10.3390/e24040489
Source DB: PubMed Journal: Entropy (Basel) ISSN: 1099-4300 Impact factor: 2.524
Figure 1An overview of our ASDCN architecture.
Figure 2The automatic dense connection module.
Comparison with RDN on five benchmark datasets. All the other settings are strictly the same. The best performance is highlighted by red.
| Method | Params | Multi-Adds | Set5 | Set10 | BSD100 | Urban100 | Manga109 |
|---|---|---|---|---|---|---|---|
| (K) | (G) | PSNR/SSIM | PSNR/SSIM | PSNR/SSIM | PSNR/SSIM | PSNR/SSIM | |
| RDN | 520 | 119.9 | 37.90/0.9601 | 33.45/0.9165 | 32.12/0.8990 | 31.87/0.9259 | 38.28/0.9764 |
| ASDCN (ours) | 364 | 83.8 |
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| 32.12/0.8990 | 31.87/ |
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Figure 3The searched architectures of different blocks.
Quantitative results of several state-of-the-art SR models at scaling factors of , and (average PSNR/SSIM). The best performance is highlighted by red.
| Method | Scale | Params | Multi-Adds | Set5 | Set10 | BSD100 | Urban100 | Manga109 |
|---|---|---|---|---|---|---|---|---|
| (K) | (G) | PSNR/SSIM | PSNR/SSIM | PSNR/SSIM | PSNR/SSIM | PSNR/SSIM | ||
| SRCNN [ | ×2 | 57 | 52.7 | 36.66/0.9542 | 32.42/0.9063 | 31.36/0.8879 | 29.50/0.8946 | 35.60/0.9663 |
| VDSR [ | ×2 | 665 | 612.6 | 37.53/0.9587 | 33.03/0.9124 | 31.90/0.8960 | 30.76/0.9140 | 37.22/0.9729 |
| LapSRN [ | ×2 | 813 | 29.9 | 37.52/0.9590 | 33.08/0.9130 | 31.80/0.8950 | 30.41/0.9100 | 37.27/0.9740 |
| IDN [ | ×2 | 590 | 174.1 | 37.83/0.9600 | 33.30/0.9148 | 32.08/0.8950 | 31.27/0.9196 | - |
| CARN-M [ | ×2 | 412 | 91.2 | 37.53/0.9583 | 33.26/0.9141 | 31.92/0.8960 | 31.23/0.9193 | - |
| MoreMNAS-A [ | ×2 | 1039 | 238.6 | 37.63/0.9584 | 33.23/0.9138 | 31.95/0.8961 | 31.24/0.9187 | - |
| FALSR-C [ | ×2 | 408 | 93.7 | 37.66/0.9586 | 33.26/0.9140 | 31.96/0.8965 | 31.24/0.9187 | - |
| AWSRN-S [ | ×2 | 397 | 91.2 | 37.75/0.9596 | 33.31/0.9151 | 32.00/0.8974 | 31.39/0.9207 | 37.90/0.9755 |
| ESRN-V [ | ×2 | 324 | 73.4 | 37.85/0.9600 | 33.42/0.9161 | 32.10/0.8987 | 31.79/0.9248 | - |
| MADNet-L1 [ | ×2 | 878 | 187.1 | 37.85/0.9600 | 33.38/0.9161 | 32.04/0.8979 | 31.62/0.9233 | - |
| OAN-S [ | ×2 | 450 | 104.9 | 37.85/0.9600 | 33.41/0.9162 | 32.06/0.8983 | 31.61/0.9230 | 38.16/0.9761 |
| WMRN [ | ×2 | 452 | 103 | 37.83/0.9599 | 33.41/0.9162 | 32.08/0.8984 | 31.68/0.9241 | 38.27/0.9763 |
| ASDCN(ours) | ×2 | 364 | 83.8 |
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| SRCNN [ | ×3 | 57 | 52.7 | 32.75/0.9090 | 29.28/0.8209 | 28.41/0.7863 | 26.24/0.7989 | 30.59/0.9107 |
| VDSR [ | ×3 | 665 | 612.6 | 33.66/0.9213 | 29.77/0.8314 | 28.82/0.7976 | 27.14/0.8279 | 32.01/0.9310 |
| CARN-M [ | ×3 | 412 | 46.1 | 33.99/0.9236 | 30.08/0.8367 | 28.91/0.8000 | 26.86/0.8263 | - |
| IDN [ | ×2 | 590 | 105.6 | 34.11/0.9253 | 29.99/0.8354 | 28.95/0.8013 | 27.42/0.8359 | - |
| AWSRN-S [ | ×3 | 447 | 48.6 | 34.02/0.9240 | 30.09/0.8376 | 28.92/0.8009 | 27.57/0.8391 | 32.82/0.9393 |
| ESRN-V [ | ×3 | 324 | 36.2 | 34.23/0.9262 | 30.27/0.8400 | 29.03/0.8039 | 27.95/0.8481 | - |
| MADNet-L1 [ | ×3 | 930 | 88.4 | 34.16/0.9253 | 30.21/0.8398 | 28.98/0.8023 | 27.77/0.8439 | - |
| OAN-S [ | ×3 | 490 | 51.2 | 34.17/0.9255 | 30.20/0.8395 | 28.99/0.8023 | 27.80/0.8438 | 33.06/0.9144 |
| WMRN [ | ×3 | 556 | 57 | 34.11/0.9251 | 30.17/0.8390 | 28.98/0.8021 | 27.80/0.8448 | 33.07/0.9413 |
| ASDCN(ours) | ×3 | 364 | 37.28 |
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| SRCNN [ | ×4 | 57 | 52.7 | 30.48/0.8628 | 27.49/0.7503 | 26.90/0.7101 | 24.52/0.7221 | 27.66/0.8505 |
| VDSR [ | ×4 | 665 | 612.6 | 31.35/0.8838 | 28.01/0.7674 | 27.29/0.7251 | 25.18/0.7524 | 28.83/0.8809 |
| LapSRN [ | ×4 | 813 | 149.4 | 31.54/0.8850 | 28.19/0.7720 | 27.32/0.7280 | 25.21/0.7560 | 29.09/0.8845 |
| IDN [ | ×4 | 590 | 81.8 | 31.82/0.8903 | 28.25/0.7730 | 27.41/0.7297 | 25.41/0.7632 | - |
| CARN-M [ | ×4 | 412 | 32.5 | 31.92/0.8903 | 28.42/0.7762 | 27.44/0.7304 | 25.63/0.7688 | - |
| AWSRN-S [ | ×4 | 588 | 33.7 | 31.77/0.8893 | 28.35/0.7761 | 27.41/0.7304 | 25.56/0.7678 | 29.74/0.8982 |
| ESRN-V [ | ×4 | 324 | 20.7 | 31.99/0.8919 | 28.49/0.7779 | 27.50/0.7331 | 25.87/0.7782 | - |
| MADNet-L1 [ | ×4 | 1002 | 54.1 | 31.95/0.8917 | 28.44/0.7780 | 27.47/0.7327 | 25.76/0.7746 | - |
| OAN-S [ | ×4 | 520 | 42.5 | 31.99/0.8926 | 28.49/0.7975 | 27.49/0.7332 | 25.81/0.7760 | 30.10/0.9036 |
| WMRN [ | ×4 | 536 | 45.7 | 32.00/0.8952 | 28.47/0.7786 | 27.49/0.7328 | 25.89/0.7789 | 30.11/0.9040 |
| ASDCN(ours) | ×4 | 375 | 21.59 |
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Figure 4Comparison of the performance and parameters between our ASDCN model and other models on Urban100 with a scale factor of 2.
Figure 5Visual comparison of super-resolution images on the Urban100, BSD100, and Manga109 datasets. The best results are highlighted by red.
Figure 6Visual comparison with a scale factor on real-world images.