Implementation of the computer tomography parallel algorithms with the incomplete set of data

被引:0
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作者
Pleszczyński M. [1 ]
机构
[1] Faculty of Applied Mathematics, Silesian Technical University of Gliwice, Śląskie, Gliwice
关键词
Big Data; Computer tomography; Incomplete set of data; Parallel algorithms; Signal and data processing;
D O I
10.7717/PEERJ-CS.339
中图分类号
学科分类号
摘要
Computer tomography has a wide field of applicability; however, most of its applications assume that the data, obtained from the scans of the examined object, satisfy the expectations regarding their amount and quality. Unfortunately, sometimes such expected data cannot be achieved. Then we deal with the incomplete set of data. In the paper we consider an unusual case of such situation, which may occur when the access to the examined object is difficult. The previous research, conducted by the author, showed that the CT algorithms can be used successfully in this case as well, but the time of reconstruction is problematic. One of possibilities to reduce the time of reconstruction consists in executing the parallel calculations. In the analyzed approach the system of linear equations is divided into blocks, such that each block is operated by a different thread. Such investigations were performed only theoretically till now. In the current paper the usefulness of the parallel-block approach, proposed by the author, is examined. The conducted research has shown that also for an incomplete data set in the analyzed algorithm it is possible to select optimal values of the reconstruction parameters. We can also obtain (for a given number of pixels) a reconstruction with a given maximum error. The paper indicates the differences between the classical and the examined problem of CT. The obtained results confirm that the real implementation of the parallel algorithm is also convergent, which means it is useful. © 2021. Pleszczyński.
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页码:1 / 19
页数:18
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