Retrospective Motion Correction in Gradient Echo MRI by Explicit Motion
Estimation Using Deep CNNs
- URL: http://arxiv.org/abs/2303.17239v1
- Date: Thu, 30 Mar 2023 09:16:13 GMT
- Title: Retrospective Motion Correction in Gradient Echo MRI by Explicit Motion
Estimation Using Deep CNNs
- Authors: Mathias S. Feinler and Bernadette N. Hahn
- Abstract summary: We propose a strategy to correct for motion artifacts using Deep Convolutional Neuronal Networks (Deep CNNs)
We show that using Deep CNNs the concepts of rigid motion compensation can be generalized to more complex motion fields.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Magnetic Resonance Imaging allows high resolution data acquisition with the
downside of motion sensitivity due to relatively long acquisition times. Even
during the acquisition of a single 2D slice, motion can severely corrupt the
image. Retrospective motion correction strategies do not interfere during
acquisition time but operate on the motion affected data. Known methods suited
to this scenario are compressed sensing (CS), generative adversarial networks
(GANs), and motion estimation. In this paper we propose a strategy to correct
for motion artifacts using Deep Convolutional Neuronal Networks (Deep CNNs) in
a reliable and verifiable manner by explicit motion estimation. The sensitivity
encoding (SENSE) redundancy that multiple receiver coils provide, has in the
past been used for acceleration, noise reduction and rigid motion compensation.
We show that using Deep CNNs the concepts of rigid motion compensation can be
generalized to more complex motion fields. Using a simulated synthetic data
set, our proposed supervised network is evaluated on motion corrupted MRIs of
abdomen and head. We compare our results with rigid motion compensation and
GANs.
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