Interior X-ray diffraction tomography with low-resolution exterior information
Zheyuan Zhu, Alexander Katsevich, Shuo Pang

TL;DR
This paper introduces a quasi-interior X-ray diffraction tomography method that uses low-resolution exterior data to improve interior reconstructions, enabling faster imaging without prior object knowledge.
Contribution
It proposes a novel quasi-interior XDT approach incorporating exterior data, reducing artifacts and avoiding the need for prior object constraints.
Findings
Enables ROI reconstruction with low-resolution exterior data
Reduces reconstruction artifacts in interior XDT
Allows fast, real-time imaging integration
Abstract
X-ray diffraction tomography (XDT) resolves spatially-variant XRD profiles within macroscopic objects, and provides improved material contrast compared to the conventional transmission-based computed tomography (CT). However, due to the small diffraction cross-section, XDT suffers from long imaging acquisition time, which could take tens of hours for a full scan using a table-top X-ray tube. In medical and industrial imaging applications, oftentimes only the XRD measurement within a region-of-interest (ROI) is required, which, together with the demand to reduce imaging time and radiation dose to the sample, motivates the development of interior XDT systems that scan and reconstruct only an internal region within the sample. The interior problem does not have a unique solution, and a direct inversion on the truncated projection data often leads to large reconstruction errors in ROI. To…
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