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Flexible Alignment Super-Resolution Network for Multi-Contrast MRI

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arxiv 2210.03460 v2 pith:OSS6APQ3 submitted 2022-10-07 eess.IV cs.CV

Flexible Alignment Super-Resolution Network for Multi-Contrast MRI

classification eess.IV cs.CV
keywords alignmentfasr-netmodulemulti-contrastsuper-resolutionflexibleimagesfeature
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Magnetic resonance imaging plays an essential role in clinical diagnosis by acquiring the structural information of biological tissue. Recently, many multi-contrast MRI super-resolution networks achieve good effects. However, most studies ignore the impact of the inappropriate foreground scale and patch size of multi-contrast MRI, which probably leads to inappropriate feature alignment. To tackle this problem, we propose the Flexible Alignment Super-Resolution Network (FASR-Net) for multi-contrast MRI Super-Resolution. The Flexible Alignment module of FASR-Net consists of two modules for feature alignment. (1) The Single-Multi Pyramid Alignment(S-A) module solves the situation where low-resolution (LR) images and reference (Ref) images have different scales. (2) The Multi-Multi Pyramid Alignment(M-A) module solves the situation where LR and Ref images have the same scale. Besides, we propose the Cross-Hierarchical Progressive Fusion (CHPF) module aiming at fusing the features effectively, further improving the image quality. Compared with other state-of-the-art methods, FASR-net achieves the most competitive results on FastMRI and IXI datasets. Our code will be available at \href{https://github.com/yimingliu123/FASR-Net}{https://github.com/yimingliu123/FASR-Net}.

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