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An Exact and Fast CBCT Reconstruction via Pseudo-Polar Fourier Transform based Discrete Grangeats Formula

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 نشر من قبل Niloufar Teyfouri
 تاريخ النشر 2019
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 تأليف N. Teyfouri




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The recent application of Fourier Based Iterative Reconstruction Method (FIRM) has made it possible to achieve high-quality 2D images from a fan beam Computed Tomography (CT) scan with a limited number of projections in a fast manner. The proposed methodology in this article is designed to provide 3D Radon space in linogram fashion to facilitate the use of FIRM with cone beam projections (CBP) for the reconstruction of 3D images in a low dose Cone Beam CT (CBCT).



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