Laser & Optoelectronics Progress, Volume. 61, Issue 18, 1811001(2024)
Deep-Learning-Based Self-Absorption Correction for Fan Beam X-Ray Fluorescence Computed Tomography
In X-ray fluorescence computed tomography (XFCT) imaging, the absorption attenuation of incident X-rays and fluorescent X-rays by the sample is a critical factor that restricts high-quality image reconstruction. This study proposes a deep-learning-based self-absorption correction method for XFCT, which utilizes a convolutional neural network based on U-Net to learn the symmetric structure distribution in the original projection data and recover complete projection data from the sinograms affected by self-absorption. Through numerical simulation, a fan-beam XFCT imaging system was established to obtain 20000 sets of fluorescence sinograms, which were then used for network training, testing, and validation. The projection data affected by self-absorption were further validated through a simulation using Geant4 software. The results indicate that the well-trained neural network can achieve self-absorption correction on incomplete projection data, thereby improving the quality of reconstructed images.
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Mengying Sun, Shanghai Jiang, Xiangpeng Li, Xin Huang, Bin Tang, Xinyu Hu, Binbin Luo, Shenghui Shi, Mingfu Zhao, Mi Zhou. Deep-Learning-Based Self-Absorption Correction for Fan Beam X-Ray Fluorescence Computed Tomography[J]. Laser & Optoelectronics Progress, 2024, 61(18): 1811001
Category: Imaging Systems
Received: Dec. 29, 2023
Accepted: Jan. 22, 2024
Published Online: Sep. 14, 2024
The Author Email: Shanghai Jiang (jiangshanghai@cqut.edu.cn), Xinyu Hu (hxy_dz@cqut.edu.cn)
CSTR:32186.14.LOP232787