2023
DOI: 10.48550/arxiv.2301.01732
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UNAEN: Unsupervised Abnomality Extraction Network for MRI Motion Artifact Reduction

Abstract: Motion artifact reduction is one of the most concerned problems in magnetic resonance imaging. As a promising solution, deep learning-based methods have been widely investigated for artifact reduction tasks in MRI. As a retrospective processing method, neural network does not cost additional acquisition time or require new acquisition equipment, and seems to work better than traditional artifact reduction methods. In the previous study, training such models require the paired motion-corrupted and motion-free M… Show more

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