Joint super-resolution image reconstruction and parameter identification in imaging operator: analysis of bilinear operator equations, numerical solution, and application to magnetic particle imaging
Veröffentlichungsdatum
2020-12-03
Zusammenfassung
One important property of imaging modalities and related applications is the resolution of image reconstructions which relies on various factors such as instrumentation or data processing. Restrictions in resolution can have manifold origins, e.g., limited resolution of available data, noise level in the data, and/or inexact model operators. In this work we investigate a novel data processing approach suited for inexact model operators. Here, two different information sources, high-dimensional model information and high-quality measurement on a lower resolution, are comprised in a hybrid approach. The joint reconstruction of a high resolution image and parameters of the imaging operator are obtained by minimizing a Tikhonov-type functional. The hybrid approach is analyzed for bilinear operator equations with respect to stability, convergence, and convergence rates. We further derive an algorithmic solution exploiting an algebraic reconstruction technique. The study is complemented by numerical results ranging from an academic test case to image reconstruction in magnetic particle imaging.
Schlagwörter
super-resolution image reconstruction
;
parameter identification#
;
imaging operator
;
bilinear operator equations
;
magnetic particle imaging
Verlag
IOP Publishing
Institution
Dokumenttyp
Wissenschaftlicher Artikel
Zeitschrift/Sammelwerk
Inverse Problems
ISSN
1361-6420
Band
36
Heft
12
Artikel-ID
124006
Zweitveröffentlichung
Ja
Dokumentversion
Postprint
Sprache
Englisch
Dateien![Vorschaubild]()
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Name
Kluth et al_Joint super-resolution image reconstruction and parameter identification in imaging operator_2020_accepted-version.pdf
Size
3.46 MB
Format
Adobe PDF
Checksum
(MD5):319321bebff20a41e31c2d45f6bee446
