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Tobias Würfl

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2-Step Sparse-View CT Reconstruction with a Domain-Specific Perceptual Network

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Dec 08, 2020
Haoyu Wei, Florian Schiffers, Tobias Würfl, Daming Shen, Daniel Kim, Aggelos K. Katsaggelos, Oliver Cossairt

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Disassemblable Fieldwork CT Scanner Using a 3D-printed Calibration Phantom

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Nov 12, 2020
Florian Schiffers, Thomas Bochynek, Andre Aichert, Tobias Würfl, Michael Rubenstein, Oliver Cossairt

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Reconstruction of Voxels with Position- and Angle-Dependent Weightings

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Oct 27, 2020
Lina Felsner, Tobias Würfl, Christopher Syben, Philipp Roser, Alexander Preuhs, Andreas Maier, Christian Riess

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Deep Learning-based Pipeline for Module Power Prediction from EL Measurements

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Sep 30, 2020
Mathis Hoffmann, Claudia Buerhop-Lutz, Luca Reeb, Tobias Pickel, Thilo Winkler, Bernd Doll, Tobias Würfl, Ian Marius Peters, Christoph Brabec, Andreas Maier, Vincent Christlein

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Projection-to-Projection Translation for Hybrid X-ray and Magnetic Resonance Imaging

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Nov 19, 2019
Bernhard Stimpel, Christopher Syben, Tobias Würfl, Katharina Breininger, Philipp Hoelter, Arnd Dörfler, Andreas Maier

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The TCGA Meta-Dataset Clinical Benchmark

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Oct 18, 2019
Mandana Samiei, Tobias Würfl, Tristan Deleu, Martin Weiss, Francis Dutil, Thomas Fevens, Geneviève Boucher, Sebastien Lemieux, Joseph Paul Cohen

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Torchmeta: A Meta-Learning library for PyTorch

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Sep 14, 2019
Tristan Deleu, Tobias Würfl, Mandana Samiei, Joseph Paul Cohen, Yoshua Bengio

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Learning with Known Operators reduces Maximum Training Error Bounds

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Jul 03, 2019
Andreas K. Maier, Christopher Syben, Bernhard Stimpel, Tobias Würfl, Mathis Hoffmann, Frank Schebesch, Weilin Fu, Leonid Mill, Lasse Kling, Silke Christiansen

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Deriving Neural Network Architectures using Precision Learning: Parallel-to-fan beam Conversion

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Oct 23, 2018
Christopher Syben, Bernhard Stimpel, Jonathan Lommen, Tobias Würfl, Arnd Dörfler, Andreas Maier

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Precision Learning: Towards Use of Known Operators in Neural Networks

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Oct 12, 2018
Andreas Maier, Frank Schebesch, Christopher Syben, Tobias Würfl, Stefan Steidl, Jang-Hwan Choi, Rebecca Fahrig

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