Within the medical field, mathematical sciences and computer skills are increasingly leading towards an intersection between each other, especially concerning the improvement of diagnostics. Computed tomography (CT) represents a very important tool, since it allows the visualization of internal areas of our body through the reconstruction of digital images. In this thesis, the ill-posed inverse problem that models 2D limited angle computed tomography is addressed with deep learning and shearlets techniques. The main idea of our work is to start from the practical filtered backprojection (FBP) reconstruction and to post-process this solution using a U-net like convolutional neural network. The network is therefore implemented with the aim ...
We present a deep-learning-based algorithm to jointly solve a reconstruction problem and a wavefron...
Recently, new programming paradigms have emerged that combine parallelism and numerical computations...
Artificial neural networks from the field of deep learning are increasingly becoming the state of th...
The high complexity of various inverse problems poses a significant challenge to model-based reconst...
The high complexity of various inverse problems poses a significant challenge to model-based reconst...
We propose a novel convolutional neural network (CNN), called PsiDONet, designed for learning pseud...
As a low-end computed tomography (CT) system, translational CT (TCT) is in urgent demand in developi...
International audienceComputed tomography has been widely used in biomedical and industrial applicat...
In transmission X-ray microscopy (TXM) systems, the rotation of a scanned sample might be restricted...
International audienceLimited-angle and sparse-view computed tomography have been widely used to sho...
Thesis (Master's)--University of Washington, 2020As a common medical imaging method, Computed Tomogr...
This paper addresses the problem of image reconstruction for region-of-interest (ROI) computed tomog...
Tomography is a powerful technique to non-destructively determine the interior structure of an objec...
We propose a novel convolutional neural network (CNN), called Psi DONet, designed for learning pseud...
This paper presents a deep learning algorithm for tomographic reconstruction (GANrec). The algorithm...
We present a deep-learning-based algorithm to jointly solve a reconstruction problem and a wavefron...
Recently, new programming paradigms have emerged that combine parallelism and numerical computations...
Artificial neural networks from the field of deep learning are increasingly becoming the state of th...
The high complexity of various inverse problems poses a significant challenge to model-based reconst...
The high complexity of various inverse problems poses a significant challenge to model-based reconst...
We propose a novel convolutional neural network (CNN), called PsiDONet, designed for learning pseud...
As a low-end computed tomography (CT) system, translational CT (TCT) is in urgent demand in developi...
International audienceComputed tomography has been widely used in biomedical and industrial applicat...
In transmission X-ray microscopy (TXM) systems, the rotation of a scanned sample might be restricted...
International audienceLimited-angle and sparse-view computed tomography have been widely used to sho...
Thesis (Master's)--University of Washington, 2020As a common medical imaging method, Computed Tomogr...
This paper addresses the problem of image reconstruction for region-of-interest (ROI) computed tomog...
Tomography is a powerful technique to non-destructively determine the interior structure of an objec...
We propose a novel convolutional neural network (CNN), called Psi DONet, designed for learning pseud...
This paper presents a deep learning algorithm for tomographic reconstruction (GANrec). The algorithm...
We present a deep-learning-based algorithm to jointly solve a reconstruction problem and a wavefron...
Recently, new programming paradigms have emerged that combine parallelism and numerical computations...
Artificial neural networks from the field of deep learning are increasingly becoming the state of th...