We propose an end-to-end differentiable architecture for tomography reconstruction that directly maps a noisy sinogram into a denoised reconstruction. Compared to existing approaches our end-to-end architecture produces more accurate reconstructions while using less parameters and time. We also propose a generative model that, given a noisy sinogram, can sample realistic reconstructions. This generative model can be used as prior inside an iterative process that, by taking into consideration the physical model, can reduce artifacts and errors in the reconstructions
A probabilistic model reasons about physical quantities as random variables that can be estimated fr...
Tomographic imaging is in general an ill-posed inverse problem. Typically, a single regularized imag...
High-quality limited-angle computed tomography (CT) reconstruction is in high demand in the medical ...
We propose an end-to-end differentiable architecture for tomography reconstruction that directly ma...
This paper presents a deep learning algorithm for tomographic reconstruction (GANrec). The algorithm...
Compensating scarce measurements by inferring them from computational models is a way to address ill...
In this article, we introduce three different strategies of tomographic reconstruction based on deep...
We present a lightweight and scalable artificial neural network architecture which is used to recons...
We present a joint model based on deep learning that is designed to inpaint the missing-wedge sinogr...
International audienceA conventional Cone Beam Computed Tomography (CBCT) architecture is composed o...
We describe and demonstrate a hierarchical reconstruction algorithm for use in noisy and limitedangl...
First introduction to the field of (emission and transmission) tomography reconstruction : general p...
In some cases the number of projections in a set of tomography data is limited. This can be seen fro...
We formulate the tomographic reconstruction problem in a variational setting. The object to be recon...
Iterative tomographic reconstruction has significantly gained interest during the past decade, mainl...
A probabilistic model reasons about physical quantities as random variables that can be estimated fr...
Tomographic imaging is in general an ill-posed inverse problem. Typically, a single regularized imag...
High-quality limited-angle computed tomography (CT) reconstruction is in high demand in the medical ...
We propose an end-to-end differentiable architecture for tomography reconstruction that directly ma...
This paper presents a deep learning algorithm for tomographic reconstruction (GANrec). The algorithm...
Compensating scarce measurements by inferring them from computational models is a way to address ill...
In this article, we introduce three different strategies of tomographic reconstruction based on deep...
We present a lightweight and scalable artificial neural network architecture which is used to recons...
We present a joint model based on deep learning that is designed to inpaint the missing-wedge sinogr...
International audienceA conventional Cone Beam Computed Tomography (CBCT) architecture is composed o...
We describe and demonstrate a hierarchical reconstruction algorithm for use in noisy and limitedangl...
First introduction to the field of (emission and transmission) tomography reconstruction : general p...
In some cases the number of projections in a set of tomography data is limited. This can be seen fro...
We formulate the tomographic reconstruction problem in a variational setting. The object to be recon...
Iterative tomographic reconstruction has significantly gained interest during the past decade, mainl...
A probabilistic model reasons about physical quantities as random variables that can be estimated fr...
Tomographic imaging is in general an ill-posed inverse problem. Typically, a single regularized imag...
High-quality limited-angle computed tomography (CT) reconstruction is in high demand in the medical ...