Submitted:
31 August 2023
Posted:
31 August 2023
You are already at the latest version
Abstract
Keywords:
1. Introduction
2. Materials and Methods
2.1. Image Acquisition
2.2. Establishment of Dataset
2.3. Improvement of Image Processing Algorithm
2.3.1. Removed Batch Normalization
2.3.2. Improved Convolutional Block Attention Module
2.3.3. Construction of Generator
2.3.4. Construction of Discriminator
2.3.5. Loss Function
3. Results
3.1. Evaluation index
3.2. Experimental results
4. Discussion
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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| Device | Item | Parameter |
|---|---|---|
| Camera | Product Model | HIKROBOT MV-CL086-91GC |
| Resolution | 8192×6 pixel | |
| Pixel Size | 5µm | |
| Maximum Line Frequency | 4.7kHz | |
| Sensor Type | CMOS | |
| Spectrum | Color | |
| Exposure Time | 3μs-10ms | |
| Data Interface | Gige | |
| Lens | Product Model | LD21S01 |
| Focus Distance | 35mm±5% | |
| Aperture | F2.8-F16 | |
| Adapter ring | Product Model | M72-F T34.5 |
| Light Source | Product Model | HIKROBOT MV-LTHS-1300-W |
| Overall Dimension | 1370mm×58mm×90.1mm | |
| Type | Linear light source | |
| Power | 576W | |
| Color Temperature | 6000-7000K |
| Item | Parameter |
|---|---|
| Size | 12200mm*24400mm*18mm |
| Raw Material Tree Species | Pine |
| Adhesive | Urea-formaldehyde resin |
| Density Deviation | <4% |
| Hot-pressing Temperature | 160-200℃ |
| Configuration Platform | Item | Parameter |
|---|---|---|
| Hardware Configuration | System | Windows 10 ×64 |
| CPU | Intel(R) Core(TM) I9 9900K@3.60 GHz | |
| GPU | NVIDIA GeForce RTX 2080 Ti | |
| Memory | KHX2666C16/16G×2 | |
| Software Configuration | IDE | PyCharm Community Edition |
| Programing Language | Python3.7 | |
| Computing Platform | CUDA10.1 | |
| GPU Accelerate library | CuDNN7604 |
| Improvements and indexes | 1st | 2nd | 3rd | 4th |
|---|---|---|---|---|
| BN | √ | × | × | × |
| Improved CBAM | × | × | √ | √ |
| Densely skip connection | × | × | × | √ |
| PSNR(dB) ↑ | 27.46 | 28.12 | 29.66 | 30.71 |
| SSIM ↑ | 0.7024 | 0.7371 | 0.7832 | 0.8146 |
| LPIPS ↓ | 0.3946 | 0.3527 | 0.3035 | 0.2881 |
| Algorithm | PSNR(dB) ↑ | SSIM ↑ | LPIPS ↓ |
|---|---|---|---|
| BICUBIC | 25.83 | 0.6517 | 0.4829 |
| SRGAN | 27.46 | 0.7024 | 0.3946 |
| SWINIR | 28.03 | 0.7498 | 0.3530 |
| SRDAGAN | 30.71 | 0.8146 | 0.2881 |
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