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Simon Arridge

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Investigating the use of publicly available natural videos to learn Dynamic MR image reconstruction

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Nov 23, 2023
Olivier Jaubert, Michele Pascale, Javier Montalt-Tordera, Julius Akesson, Ruta Virsinskaite, Daniel Knight, Simon Arridge, Jennifer Steeden, Vivek Muthurangu

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Inverse Problems with Learned Forward Operators

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Nov 21, 2023
Simon Arridge, Andreas Hauptmann, Yury Korolev

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Score-Based Generative Models for PET Image Reconstruction

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Aug 27, 2023
Imraj RD Singh, Alexander Denker, Riccardo Barbano, Željko Kereta, Bangti Jin, Kris Thielemans, Peter Maass, Simon Arridge

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A Learned Born Series for Highly-Scattering Media

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Dec 09, 2022
Antonio Stanziola, Simon Arridge, Ben T. Cox, Bradley E. Treeby

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Unsupervised denoising for sparse multi-spectral computed tomography

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Nov 02, 2022
Satu I. Inkinen, Mikael A. K. Brix, Miika T. Nieminen, Simon Arridge, Andreas Hauptmann

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FReSCO: Flow Reconstruction and Segmentation for low latency Cardiac Output monitoring using deep artifact suppression and segmentation

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Mar 25, 2022
Olivier Jaubert, Javier Montalt-Tordera, James Brown, Daniel Knight, Simon Arridge, Jennifer Steeden, Vivek Muthurangu

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Neural Network Kalman filtering for 3D object tracking from linear array ultrasound data

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Nov 18, 2021
Arttu Arjas, Erwin J. Alles, Efthymios Maneas, Simon Arridge, Adrien Desjardins, Mikko J. Sillanpää, Andreas Hauptmann

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Quantifying Sources of Uncertainty in Deep Learning-Based Image Reconstruction

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Nov 30, 2020
Riccardo Barbano, Željko Kereta, Chen Zhang, Andreas Hauptmann, Simon Arridge, Bangti Jin

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Quantifying Model Uncertainty in Inverse Problems via Bayesian Deep Gradient Descent

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Jul 20, 2020
Riccardo Barbano, Chen Zhang, Simon Arridge, Bangti Jin

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