2022
DOI: 10.48550/arxiv.2207.02390
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Swin Deformable Attention U-Net Transformer (SDAUT) for Explainable Fast MRI

Abstract: Fast MRI aims to reconstruct a high fidelity image from partially observed measurements. Exuberant development in fast MRI using deep learning has been witnessed recently. Meanwhile, novel deep learning paradigms, e.g., Transformer based models, are fast-growing in natural language processing and promptly developed for computer vision and medical image analysis due to their prominent performance. Nevertheless, due to the complexity of the Transformer, the application of fast MRI may not be straightforward. The… Show more

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