Retrospective Motion Correction of MR Images using Prior-Assisted Deep
Learning
- URL: http://arxiv.org/abs/2011.14134v1
- Date: Sat, 28 Nov 2020 14:03:59 GMT
- Title: Retrospective Motion Correction of MR Images using Prior-Assisted Deep
Learning
- Authors: Soumick Chatterjee, Alessandro Sciarra, Max D\"unnwald, Steffen
Oeltze-Jafra, Andreas N\"urnberger and Oliver Speck
- Abstract summary: Motion artefacts can degrade MRI images and render them unusable for accurate diagnosis.
This work proposes to enhance the performance of existing deep learning models by the inclusion of additional information present as image priors.
- Score: 56.606579521437695
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In MRI, motion artefacts are among the most common types of artefacts. They
can degrade images and render them unusable for accurate diagnosis. Traditional
methods, such as prospective or retrospective motion correction, have been
proposed to avoid or alleviate motion artefacts. Recently, several other
methods based on deep learning approaches have been proposed to solve this
problem. This work proposes to enhance the performance of existing deep
learning models by the inclusion of additional information present as image
priors. The proposed approach has shown promising results and will be further
investigated for clinical validity.
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