| Literature DB >> 36081151 |
Wei Yu1, Zheng Liu1, Zilong Zhuang1, Ying Liu1, Xu Wang1, Yutu Yang1, Binli Gou1.
Abstract
With the global population surge, the consumption of nonrenewable resources and pollution emissions have reached an alarming level. Engineered bamboo is widely used in construction, mechanical and electrical product packaging, and other industries. Its main damage is the material fracture caused by the expansion of initial cracks. In order to accurately detect the length of crack propagation, digital image correlation technology can be used for calculation. At present, the traditional interpolation method is still used in the reconstruction of engineered bamboo speckle images for digital correlation technology, and the performance is relatively lagging. Therefore, this paper proposes a super-resolution reconstruction method of engineering-bamboo speckle images based on an attention-dense residual network. In this study, the residual network is improved by removing the BN layer, using the L1 loss function, introducing the attention model, and designing an attention-intensive residual block. An image super-resolution model based on the attention-dense residual network is proposed. Finally, the objective evaluation indexes PSNR and SSIM and subjective evaluation index MOS were used to evaluate the performance of the model. The ADRN method was 29.19 dB, 0.938, and 3.19 points in PSNR, SSIM, and MOS values. Compared to the traditional BICUBIC B-spline interpolation method, the speckle images reconstructed by this model increased by 8.55 dB, 0.323, and 1.43 points, respectively. Compared to the SRResNet method, the speckle images reconstructed by this model were increased by 4.53 dB, 0.111, and 0.14 points, respectively. The reconstructed speckle images of engineered bamboo were clearer, and the image features were more obvious, which could better identify the tip crack position of the engineered bamboo. The results show that the super-resolution reconstruction effect of engineered-bamboo speckle images can be effectively improved by adding the attention mechanism to the residual network. This method has great application value.Entities:
Keywords: attention-dense residual network; engineered bamboo; speckle images; super-resolution
Year: 2022 PMID: 36081151 PMCID: PMC9460480 DOI: 10.3390/s22176693
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.847
Hot-pressing process parameters.
| Related | Glue | Sizing | Press Range | Temperature | Stress | Time |
|---|---|---|---|---|---|---|
| Set value | Phenolic resin |
| 2500 t | 135–138 °C | 2300 T/SMPa | 60 min |
Figure 1Engineered bamboo specimens.
Equipment types and performance parameters.
| Equipment Type | Performance Parameters |
|---|---|
| Universal testing machine | Range: 100 kN |
| High-speed camera | Maximum resolution: 4000 × 2000 pixels |
| Image acquisition and parameter control system | Acquisition period: 50,000–99,999 µs |
Figure 2Schematic diagram of engineered-bamboo specimens.
Dimensional parameters of engineered-bamboo specimens (unit: mm).
| Related Parameters |
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| Numerical value | 135 | 160 | 225 | 250 | 25 | 25 | 55 | 30 | 150 | 5 |
Figure 3Experimental system for fracture of engineered bamboo using a high-speed camera.
Figure 4Experimental procedure.
Figure 5Speckle specimens of engineered bamboo.
Figure 6Example of the speckle image of the engineered bamboo crack.
Figure 7Examples of speckle images of engineered bamboo.
Figure 8Algorithm flow chart.
Figure 9Multilayer attention-dense structure.
Figure 10Comparison of residual block structures (a) residual blocks used by SRResNet and SRGAN; (b) residual blocks proposed by EDSR; (c) residual blocks used in this study.
Figure 11Structure of the attention module.
Hardware platform configuration table.
| Hardware Configuration | Name |
|---|---|
| Processors | Intel Xeon (Xeon) W-2155@3.30 GHz |
| Motherboard (computer) (lit. lord board) | Dell 0X8DXD Core i7 |
| Video card | Nvidia GeForce GTX 1080 Ti |
| Video memory | 8 G |
| RAM | Hynix DDR4 2666 MHz 64 G |
Network parameters for each algorithm.
| Algorithm | SRResNet | ADRN |
|---|---|---|
| Number of residual blocks | 32 | 16 |
| Training image size | 128 | 128 |
| Applicability to pretrained models | deny | deny |
| Loss function |
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| Number of feature maps | 64 | 64 |
| Batch size | 16 | 16 |
| Whether or not to add a BN layer | yes | no |
Ablation experiments.
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Improvements and | 1st | 2nd | 3rd | 4th | 5th |
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| Loss function |
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| BN layer | √ | √ | × | × | × |
| Attention mechanisms | × | × | × | √ | √ |
| Dense connection | × | × | × | × | √ |
| PSNR/SSIM | 28.92/0.896 | 28.92/0.896 | 29.25/0.902 | 29.03/0.927 | 29.19/0.938 |
Comparison of the mean results of evaluation indexes and test time for the three algorithms on the test set.
| Algorithm | PSNR (dB) | SSIM | MOS (Points) | Test Time(s) |
|---|---|---|---|---|
| BICUBIC B-spline interpolation | 20.64 | 0.615 | 2.48 | 1.745 × 10−4 |
| SRResNet | 24.66 | 0.827 | 3.77 | 1.161 |
| ADRN | 29.19 | 0.938 | 3.91 | 1.872 |
Figure 12Comparison of reconstructed image effects. (a) Low-resolution (LR) image; (b) image reconstructed using BICUBIC B-spline interpolation method; (c) image reconstructed using SRResNet method; (d) image reconstructed using ADRN method.