Computational complexity of three-dimensional discrete tomography with missing data
Discrete tomography deals with problems of determining shape of a discrete object from a set of projections. In this paper, we deal with a fundamental problem in discreet tomography: reconstructing a discrete object in R 3 from its orthogonal projections, which we call three-dimensional discrete tom...
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Veröffentlicht in: | Japan journal of industrial and applied mathematics 2021, Vol.38 (3), p.823-858 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | Discrete tomography deals with problems of determining shape of a discrete object from a set of projections. In this paper, we deal with a fundamental problem in discreet tomography: reconstructing a discrete object in
R
3
from its orthogonal projections, which we call
three-dimensional discrete tomography
. This problem has been mostly studied under the assumption that
complete data
of the projections are available. However, in practice, there might be
missing data
in the projections, which come from, e.g., the lack of precision in the measurements. In this paper, we consider the three-dimensional discrete tomography with missing data. Specifically, we consider the following three fundamental problems in discrete tomography: the consistency, counting, and uniqueness problems, and classify the computational complexities of these problems in terms of the length of one dimension. We also generalize these results to higher-dimensional discrete tomography, which has applications in operations research and statistics. |
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ISSN: | 0916-7005 1868-937X |
DOI: | 10.1007/s13160-021-00464-0 |