Litcius/Paper detail

Bayesian approach to inverse scattering with topological priors

Ana Carpio, Sergei Iakunin, Georg Stadler

2020Inverse Problems18 citationsDOIOpen Access PDF

Abstract

Abstract We propose a Bayesian inference framework to estimate uncertainties in inverse scattering problems. Given the observed data, the forward model and their uncertainties, we find the posterior distribution over a finite parameter field representing the objects. To construct the prior distribution we use a topological sensitivity analysis. We demonstrate the approach on the Bayesian solution of 2D inverse problems in light and acoustic holography with synthetic data. Statistical information on objects such as their center location, diameter size, orientation, as well as material properties, are extracted by sampling the posterior distribution. Assuming the number of objects known, comparison of the results obtained by Markov Chain Monte Carlo (MCMC) sampling and by sampling a Gaussian distribution found by linearization about the maximum a posteriori estimate show reasonable agreement. The latter procedure has low computational cost, which makes it an interesting tool for uncertainty studies in 3D. However, MCMC sampling provides a more complete picture of the posterior distribution and yields multi-modal posterior distributions for problems with larger measurement noise. When the number of objects is unknown, we devise a stochastic model selection framework.

Topics & Concepts

Posterior probabilityPrior probabilityMathematicsMarkov chain Monte CarloAlgorithmBayesian inferenceInverse problemSampling (signal processing)Applied mathematicsGibbs samplingBayesian probabilityBayesian linear regressionDistribution (mathematics)Metropolis–Hastings algorithmStatistical inferenceMonte Carlo methodLinearizationProbability distributionMaximum a posteriori estimationSlice samplingGaussianInverse distributionImportance samplingSensitivity (control systems)Statistical physicsUncertainty quantificationMarkov chainMathematical optimizationSampling distributionInverse scattering problemInverseEstimatorInverse-chi-squared distributionModel selectionMarkov random fieldInferenceCategorical distributionField (mathematics)Bayesian hierarchical modelingApproximate inferenceMicrowave Imaging and Scattering AnalysisNumerical methods in inverse problemsAcoustic Wave Phenomena Research
Bayesian approach to inverse scattering with topological priors | Litcius