Publication | Closed Access
Uncertainty assessment for reconstructions based on deformable geometry
33
Citations
16
References
1997
Year
Image ReconstructionEngineeringComputer-aided DesignStructural OptimizationUncertainty QuantificationDeformable Geometric ModelsBayesian MethodsComputational ImagingDance ImagesGeometrical AccuracyComputational GeometryRadiologyGeometry ProcessingGeometric ModelingMcmc SequenceReconstruction TechniqueMedical ImagingInverse ProblemsDeformation ReconstructionNonlinear Reconstruction ProblemBayesian StatisticsNatural SciencesBiomedical ImagingUncertainty Assessment3D Reconstruction3D Imaging
Deformable geometric models can be used in the context of Bayesian analysis to solve ill-posed tomographic reconstruction problems. The uncertainties associated with a Bayesian analysis may be assessed by generating a set of random samples from the posterior, which may be accomplished using a Markov Chain Monte Carlo (MCMC) technique. We demonstrate the combination of these techniques for a reconstruction of a two-dimensional object from two orthogonal noisy projections. The reconstructed object is modeled in terms of a deformable geometrically defined boundary with a uniform interior density yielding a nonlinear reconstruction problem. We show how an MCMC sequence can be used to estimate uncertainties in the location of the edge of the reconstructed object. © 1997 John Wiley & Sons, Inc. Int J Imaging Syst Technol, 8, 506–512, 1997
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