Algorithms for non-negatively constrained maximum penalized likelihood reconstruction in tomographic imaging (Q1736549)
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scientific article; zbMATH DE number 7042155
| Language | Label | Description | Also known as |
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| English | Algorithms for non-negatively constrained maximum penalized likelihood reconstruction in tomographic imaging |
scientific article; zbMATH DE number 7042155 |
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Algorithms for non-negatively constrained maximum penalized likelihood reconstruction in tomographic imaging (English)
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26 March 2019
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Summary: Image reconstruction is a key component in many medical imaging modalities. The problem of image reconstruction can be viewed as a special inverse problem where the unknown image pixel intensities are estimated from the observed measurements. Since the measurements are usually noise contaminated, statistical reconstruction methods are preferred. In this paper we review some non-negatively constrained simultaneous iterative algorithms for maximum penalized likelihood reconstructions, where all measurements are used to estimate all pixel intensities in each iteration.
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tomographic imaging
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penalized likelihood
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algorithms
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constrained optimization
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