CVMay 31, 2023

Analytical reconstructions of full-scan multiple source-translation computed tomography under large field of views

arXiv:2305.19767v36 citations
Originality Incremental advance
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This work addresses incremental improvements in medical imaging for researchers and practitioners by enhancing reconstruction quality under extended fields of view.

The paper tackled the problem of errors and artifacts in analytical reconstructions for multiple source-translation computed tomography under large fields of view by combining full-scan geometry with backprojection filtration algorithms, resulting in high-quality, stable images for large objects as demonstrated experimentally.

This paper is to investigate the high-quality analytical reconstructions of multiple source-translation computed tomography (mSTCT) under an extended field of view (FOV). Under the larger FOVs, the previously proposed backprojection filtration (BPF) algorithms for mSTCT, including D-BPF and S-BPF (their differences are different derivate directions along the detector and source, respectively), make some errors and artifacts in the reconstructed images due to a backprojection weighting factor and the half-scan mode, which deviates from the intention of mSTCT imaging. In this paper, to achieve reconstruction with as little error as possible under the extremely extended FOV, we combine the full-scan mSTCT (F-mSTCT) geometry with the previous BPF algorithms to study the performance and derive a suitable redundancy-weighted function for F-mSTCT. The experimental results indicate FS-BPF can get high-quality, stable images under the extremely extended FOV of imaging a large object, though it requires more projections than FD-BPF. Finally, for different practical requirements in extending FOV imaging, we give suggestions on algorithm selection.

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