Publication | Open Access
Compressed sensing based interior tomography
520
Citations
18
References
2009
Year
Numerical AnalysisComputed TomographyImage ReconstructionEngineeringTotal VariationImage AnalysisSignal ReconstructionCt ScanInterior TomographyComputational GeometryRadiologyHealth SciencesGeometric ModelingReconstruction TechniqueMedical ImagingInverse ProblemsTotal Variation MinimizationMedical Image ComputingSignal ProcessingBiomedical ImagingTomography
While conventional wisdom is that the interior problem does not have a unique solution, by analytic continuation we recently showed that the interior problem can be uniquely and stably solved if we have a known sub-region inside a region of interest (ROI). However, such a known sub-region is not always readily available, and it is even impossible to find in some cases. Based on compressed sensing theory, here we prove that if an object under reconstruction is essentially piecewise constant, a local ROI can be exactly and stably reconstructed via the total variation minimization. Because many objects in computed tomography (CT) applications can be approximately modeled as piecewise constant, our approach is practically useful and suggests a new research direction for interior tomography. To illustrate the merits of our finding, we develop an iterative interior reconstruction algorithm that minimizes the total variation of a reconstructed image and evaluate the performance in numerical simulation.
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