The majority of model-based learned image reconstruction methods in medical imaging have been limited to uniform domains, such as pixelated images. If the underlying model is solved on nonuniform meshes, arising from a finite element method typical for nonlinear inverse problems, interpolation and embeddings are needed. To overcome this, we present a flexible framework to extend model-based learning directly to nonuniform meshes, by interpreting the mesh as a graph and formulating our network architectures using graph convolutional neural networks. This gives rise to the proposed iterative Graph Convolutional Newton-type Method (GCNM), which includes the forward model in the solution of the inverse problem, while all updates are d...
This thesis deals with the problem of improving classical methods for scene reconstruction via multi...
This thesis explores graph-based regularization techniques for inverse problems in imaging and visio...
We present a statistical framework to benchmark the performance of neural-network-based reconstructi...
Abstract The majority of model-based learned image reconstruction methods in medical imaging have b...
This thesis addresses the electrical impedance tomography (EIT) image reconstruction problem where s...
In this paper, we propose a novel deep convolutional neural network (CNN)-based algorithm for solvin...
In this thesis, we propose new algorithms to solve inverse problems in the context of biomedical ima...
Deep neural networks have shown great potential in image reconstruction problems in Euclidean space....
Neural networks have recently allowed solving many ill-posed inverse problems with unprecedented per...
Electrical impedance tomography (EIT) is the problem of determining the electrical conductivity dist...
Inverse Problems in medical imaging and computer vision are traditionally solved using purely model-...
The paper considers the problem of performing a task defined on a model parameter that is only obser...
A Transformer-based deep direct sampling method is proposed for a class of boundary value inverse pr...
The emergence of deep-learning-based methods for solving inverse problems has enabled a significant ...
Solving an ill-posed inverse problem is difficult because it doesn\u27t have a unique solution. In p...
This thesis deals with the problem of improving classical methods for scene reconstruction via multi...
This thesis explores graph-based regularization techniques for inverse problems in imaging and visio...
We present a statistical framework to benchmark the performance of neural-network-based reconstructi...
Abstract The majority of model-based learned image reconstruction methods in medical imaging have b...
This thesis addresses the electrical impedance tomography (EIT) image reconstruction problem where s...
In this paper, we propose a novel deep convolutional neural network (CNN)-based algorithm for solvin...
In this thesis, we propose new algorithms to solve inverse problems in the context of biomedical ima...
Deep neural networks have shown great potential in image reconstruction problems in Euclidean space....
Neural networks have recently allowed solving many ill-posed inverse problems with unprecedented per...
Electrical impedance tomography (EIT) is the problem of determining the electrical conductivity dist...
Inverse Problems in medical imaging and computer vision are traditionally solved using purely model-...
The paper considers the problem of performing a task defined on a model parameter that is only obser...
A Transformer-based deep direct sampling method is proposed for a class of boundary value inverse pr...
The emergence of deep-learning-based methods for solving inverse problems has enabled a significant ...
Solving an ill-posed inverse problem is difficult because it doesn\u27t have a unique solution. In p...
This thesis deals with the problem of improving classical methods for scene reconstruction via multi...
This thesis explores graph-based regularization techniques for inverse problems in imaging and visio...
We present a statistical framework to benchmark the performance of neural-network-based reconstructi...