The Bayesian approach to solving inverse problems relies on the choice of a prior. This critical ingredient allows the formulation of expert knowledge or physical constraints in a probabilistic fashion and plays an important role for the success of the inference. Recently, Bayesian inverse problems were solved using generative models as highly informative priors. Generative models are a popular tool in machine learning to generate data whose properties closely resemble those of a given database. Typically, the generated distribution of data is embedded in a low-dimensional manifold. For the inverse problem, a generative model is trained on a database that reflects the properties of the sought solution, such as typical structures of the tiss...
In the context of solving inverse problems for physics applications within a Bayesian framework, we ...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Aeronautics and Astronautics, 2...
International audienceWe investigate the use of learning approaches to handle Bayesian inverse probl...
Deep generative networks have achieved great success in high dimensional density approximation, espe...
Inverse problems – the process of recovering unknown parameters from indirect measurements – are enc...
Most modern imaging systems incorporate a computational pipeline to infer the image of interest from...
Inverse problems are among the most challenging and widespread problems in science today. Inverse pr...
International audienceWe investigate the use of learning approaches to handle Bayesian inverse probl...
Inverse problems are an important class of problems that appear in many practical disciplines, in wh...
We consider high-dimensional Bayesian inverse problems with arbitrary likelihood and product-form La...
International audienceClassical methods for inverse problems are mainly based on regularization theo...
In this thesis on data-driven methods in inverse problems we introduce several new methods to solve ...
Inverse problems arise everywhere we have indirect measurement. Regularization and Bayesian inferenc...
The Bayesian approach to inverse problems provides a rigorous framework for the incorporation and qu...
Inverse problems are notoriously difficult to solve because they can have no solutions, multiple sol...
In the context of solving inverse problems for physics applications within a Bayesian framework, we ...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Aeronautics and Astronautics, 2...
International audienceWe investigate the use of learning approaches to handle Bayesian inverse probl...
Deep generative networks have achieved great success in high dimensional density approximation, espe...
Inverse problems – the process of recovering unknown parameters from indirect measurements – are enc...
Most modern imaging systems incorporate a computational pipeline to infer the image of interest from...
Inverse problems are among the most challenging and widespread problems in science today. Inverse pr...
International audienceWe investigate the use of learning approaches to handle Bayesian inverse probl...
Inverse problems are an important class of problems that appear in many practical disciplines, in wh...
We consider high-dimensional Bayesian inverse problems with arbitrary likelihood and product-form La...
International audienceClassical methods for inverse problems are mainly based on regularization theo...
In this thesis on data-driven methods in inverse problems we introduce several new methods to solve ...
Inverse problems arise everywhere we have indirect measurement. Regularization and Bayesian inferenc...
The Bayesian approach to inverse problems provides a rigorous framework for the incorporation and qu...
Inverse problems are notoriously difficult to solve because they can have no solutions, multiple sol...
In the context of solving inverse problems for physics applications within a Bayesian framework, we ...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Aeronautics and Astronautics, 2...
International audienceWe investigate the use of learning approaches to handle Bayesian inverse probl...