We introduce a level set based approach to Bayesian geometric inverse problems. In these problems the interface between different domains is the key unknown, and is realized as the level set of a function. This function itself becomes the object of the inference. Whilst the level set methodology has been widely used for the solution of geometric inverse problems, the Bayesian formulation that we develop here contains two significant advances: firstly it leads to a well-posed inverse problem in which the posterior distribution is Lipschitz with respect to the observed data, and may be used to not only estimate interface locations, but quantify uncertainty in them; and secondly it leads to computationally expedient algorithms in which the lev...
International audienceWe give an overview of recent techniques which use a level set representation ...
International audienceWe give an overview of recent techniques which use a level set representation ...
International audienceWe investigate the use of learning approaches to handle Bayesian inverse probl...
We introduce a level set based approach to Bayesian geometric inverse problems. In these problems th...
We introduce a level set based approach to Bayesian geometric inverse problems. In these problems th...
We introduce a level set based approach to Bayesian geometric inverse problems. In these problems th...
We introduce a level set based approach to Bayesian geometric inverse problems. In these problems th...
We introduce a level set based approach to Bayesian geometric inverse problems. In these problems th...
The level set approach has proven widely successful in the study of inverse problems for inter- face...
The level set approach has proven widely successful in the study of inverse problems for inter- face...
The level set approach has proven widely successful in the study of inverse problems for interfaces,...
The level set approach has proven widely successful in the study of inverse problems for inter- face...
The level set approach has proven widely successful in the study of inverse problems for interfaces,...
Abstract. In this paper, a parametric level set method for reconstruction of obstacles in gen-eral i...
The level set approach has proven widely successful in the study of inverse problems for interfaces,...
International audienceWe give an overview of recent techniques which use a level set representation ...
International audienceWe give an overview of recent techniques which use a level set representation ...
International audienceWe investigate the use of learning approaches to handle Bayesian inverse probl...
We introduce a level set based approach to Bayesian geometric inverse problems. In these problems th...
We introduce a level set based approach to Bayesian geometric inverse problems. In these problems th...
We introduce a level set based approach to Bayesian geometric inverse problems. In these problems th...
We introduce a level set based approach to Bayesian geometric inverse problems. In these problems th...
We introduce a level set based approach to Bayesian geometric inverse problems. In these problems th...
The level set approach has proven widely successful in the study of inverse problems for inter- face...
The level set approach has proven widely successful in the study of inverse problems for inter- face...
The level set approach has proven widely successful in the study of inverse problems for interfaces,...
The level set approach has proven widely successful in the study of inverse problems for inter- face...
The level set approach has proven widely successful in the study of inverse problems for interfaces,...
Abstract. In this paper, a parametric level set method for reconstruction of obstacles in gen-eral i...
The level set approach has proven widely successful in the study of inverse problems for interfaces,...
International audienceWe give an overview of recent techniques which use a level set representation ...
International audienceWe give an overview of recent techniques which use a level set representation ...
International audienceWe investigate the use of learning approaches to handle Bayesian inverse probl...