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ID 117151
著者
石川, 和希 Tokushima University
山口, 雄作 Shikoku Medical Center for Children and Adults, National Hospital Organization
アボウ アルオラ, オマル Tanta University
キーワード
power-divergence measure
computed tomography
iterative reconstruction
ordered-subsets algorithm
block-iterative reconstruction
資料タイプ
学術雑誌論文
抄録
Iterative reconstruction of density pixel images from measured projections in computed tomography has attracted considerable attention. The ordered-subsets algorithm is an acceleration scheme that uses subsets of projections in a previously decided order. Several methods have been proposed to improve the convergence rate by permuting the order of the projections. However, they do not incorporate object information, such as shape, into the selection process. We propose a block-iterative reconstruction from sparse projection views with the dynamic selection of subsets based on an estimating function constructed by an extended power-divergence measure for decreasing the objective function as much as possible. We give a unified proposition for the inequality related to the difference between objective functions caused by one iteration as the theoretical basis of the proposed optimization strategy. Through the theory and numerical experiments, we show that nonuniform and sparse use of projection views leads to a reconstruction of higher-quality images and that an ordered subset is not the most effective for block-iterative reconstruction. The two-parameter class of extended power-divergence measures is the key to estimating an effective decrease in the objective function and plays a significant role in constructing a robust algorithm against noise.
掲載誌名
Entropy
ISSN
10994300
出版者
MDPI
24
5
開始ページ
740
発行日
2022-05-23
権利情報
This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
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言語
eng
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部局
医学系