Paper
16 August 2024 Terahertz deep learning computed tomography in extreme sparse view
Jialin Li, Shuai Sun, Jianglei Di, Wei Zhang, Zeren Li
Author Affiliations +
Proceedings Volume 13231, 4th International Conference on Laser, Optics, and Optoelectronic Technology (LOPET 2024); 132312I (2024) https://doi.org/10.1117/12.3040260
Event: 4th International Conference on Laser, Optics, and Optoelectronic Technology (LOPET 2024), 2024, Chongqing, China
Abstract
We introduce a novel deep learning-based framework to decrease data acquisition time and enhance the 3D reconstruction resolution of sparse view THz-CT. Using asymmetric convolution blocks and channel attention mechanisms, our network ASE-UNet effectively suppresses terahertz image artifact in extreme sparse views. Furthermore, a preprocessing step involving integrating bandwidth power effectively converts time-domain data into detailed spatiotemporal data. The results show that our method delivered superior reconstruction quality and is more efficient in data usage than traditional iterative algorithms
(2024) Published by SPIE. Downloading of the abstract is permitted for personal use only.
Jialin Li, Shuai Sun, Jianglei Di, Wei Zhang, and Zeren Li "Terahertz deep learning computed tomography in extreme sparse view", Proc. SPIE 13231, 4th International Conference on Laser, Optics, and Optoelectronic Technology (LOPET 2024), 132312I (16 August 2024); https://doi.org/10.1117/12.3040260
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KEYWORDS
Image restoration

Reconstruction algorithms

Deep learning

Computed tomography

Digital image processing

Image processing

Pulse signals

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