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Bernhard Stimpel

Showing results (1-10 of 6) with videos related to

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IEEE Transactions on Medical Imaging|August 4, 2020
Known Operator Learning Enables Constrained Projection Geometry Conversion: Parallel to Cone-Beam for Hybrid MR/X-Ray ImagingChristopher Syben, Bernhard Stimpel, Philipp Roser, et al.
IEEE Transactions on Medical Imaging|November 26, 2019
Multi-Modal Deep Guided Filtering for Comprehensible Medical Image ProcessingBernhard Stimpel, Christopher Syben, Franziska Schirrmacher, et al.
Medical Physics|August 8, 2019
Technical Note: PYRO-NN: Python reconstruction operators in neural networksChristopher Syben, Markus Michen, Bernhard Stimpel, et al.
Scientific Reports|December 13, 2019
Projection-to-Projection Translation for Hybrid X-ray and Magnetic Resonance ImagingBernhard Stimpel, Christopher Syben, Tobias Würfl, et al.
IEEE Transactions on Medical Imaging|April 13, 2021
Deep Learning-Based ECG-Free Cardiac Navigation for Multi-Dimensional and Motion-Resolved Continuous Magnetic Resonance ImagingElisabeth Hoppe, Jens Wetzl, Seung Su Yoon, et al.
Nature Machine Intelligence|August 14, 2019
Learning with Known Operators reduces Maximum Training Error BoundsAndreas K Maier, Christopher Syben, Bernhard Stimpel, et al.
Pageof 1

Showing results (1-10 of 6) with videos related to

Sort By:
Pageof 1
IEEE Transactions on Medical Imaging|August 4, 2020
Known Operator Learning Enables Constrained Projection Geometry Conversion: Parallel to Cone-Beam for Hybrid MR/X-Ray ImagingChristopher Syben, Bernhard Stimpel, Philipp Roser, et al.
IEEE Transactions on Medical Imaging|November 26, 2019
Multi-Modal Deep Guided Filtering for Comprehensible Medical Image ProcessingBernhard Stimpel, Christopher Syben, Franziska Schirrmacher, et al.
Medical Physics|August 8, 2019
Technical Note: PYRO-NN: Python reconstruction operators in neural networksChristopher Syben, Markus Michen, Bernhard Stimpel, et al.
Scientific Reports|December 13, 2019
Projection-to-Projection Translation for Hybrid X-ray and Magnetic Resonance ImagingBernhard Stimpel, Christopher Syben, Tobias Würfl, et al.
IEEE Transactions on Medical Imaging|April 13, 2021
Deep Learning-Based ECG-Free Cardiac Navigation for Multi-Dimensional and Motion-Resolved Continuous Magnetic Resonance ImagingElisabeth Hoppe, Jens Wetzl, Seung Su Yoon, et al.
Nature Machine Intelligence|August 14, 2019
Learning with Known Operators reduces Maximum Training Error BoundsAndreas K Maier, Christopher Syben, Bernhard Stimpel, et al.
Pageof 1