Approximation Algorithm for X-ray Imaging Optimization of High-Absorption Ratio Materials
Abstract
:1. Introduction
- At present, the relevant research on X-ray imaging in the industry is mostly the study of a single material, and the X-ray imaging study of the high-absorption ratio material is less, which is more demanding for the selection of the ray source and the subsequent processing of the image;
- Some research results point out that when the ray source selects the appropriate ray energy, X-ray imaging technology can be applied to high-absorption ratio materials but rarely gives a specific ray source selection method;
- In engineering applications, the lack of means to quickly complete the selection of reasonable X-ray sources leads to complicating the subsequent X-ray image enhancement process, which affects the in-depth research of the above technologies.
- Through the X-ray absorption model, combined with the performance of the X-ray imaging detector, with the best symmetry and contrast as the model constraints, decompose the key factors of high absorption ratio material imaging.
- By expanding iterations and simplifying the calculation process, the optimal imaging converging surface is found, and then the optimal energy input conditions of high-absorption materials are obtained and symmetrically balanced.
- Test the effectiveness of the algorithm through experimental simulation and measurement verification. Our method achieves better image quality and reduces subsequent complications of the X-ray image enhancement process.
2. X-ray High Absorption Ratio Structural Imaging Model Optimization
2.1. X-ray Imaging Physical Model Construction
2.2. X-ray High Absorption Ratio Structural Imaging Model Optimization
2.2.1. Model Building
2.2.2. Model Optimization
3. X-ray Image Enhancement Algorithm
3.1. Histogram Equalization Algorithm
- Calculate the cumulative histogram
- Interval conversion of the cumulative histogram
3.2. Bilateral Filtering
4. Experimental Verification
4.1. Step Wedge X-ray Imaging Simulation
4.2. Strain Clamp X-ray Imaging Test
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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SIT. 1 | SIT. 2 | SIT. 3 | SIT. 4 | SIT. 5 | |
---|---|---|---|---|---|
Calculate (kV) | 101 | 139 | 170 | 163 | 182 |
Measured (kV) | 106 | 145 | 167 | 165 | 177 |
Error Rate | 4.7% | 4.1% | 1.8% | 1.2% | 2.7% |
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Liu, Y.; Li, Y.; Jiang, S.; Ye, X.; Liu, G. Approximation Algorithm for X-ray Imaging Optimization of High-Absorption Ratio Materials. Symmetry 2023, 15, 44. https://doi.org/10.3390/sym15010044
Liu Y, Li Y, Jiang S, Ye X, Liu G. Approximation Algorithm for X-ray Imaging Optimization of High-Absorption Ratio Materials. Symmetry. 2023; 15(1):44. https://doi.org/10.3390/sym15010044
Chicago/Turabian StyleLiu, Yanxiu, Ye Li, Sheng Jiang, Xin Ye, and Guoyi Liu. 2023. "Approximation Algorithm for X-ray Imaging Optimization of High-Absorption Ratio Materials" Symmetry 15, no. 1: 44. https://doi.org/10.3390/sym15010044
APA StyleLiu, Y., Li, Y., Jiang, S., Ye, X., & Liu, G. (2023). Approximation Algorithm for X-ray Imaging Optimization of High-Absorption Ratio Materials. Symmetry, 15(1), 44. https://doi.org/10.3390/sym15010044