HyperCMR: Enhanced Multi-Contrast CMR Reconstruction with Eagle Loss
Accelerating image acquisition for cardiac magnetic resonance imaging (CMRI) is a critical task. CMRxRecon2024 challenge aims to set the state of the art for multi-contrast CMR reconstruction. This paper presents HyperCMR, a novel framework designed to accelerate the reconstruction of multi-contrast...
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Zusammenfassung: | Accelerating image acquisition for cardiac magnetic resonance imaging (CMRI)
is a critical task. CMRxRecon2024 challenge aims to set the state of the art
for multi-contrast CMR reconstruction. This paper presents HyperCMR, a novel
framework designed to accelerate the reconstruction of multi-contrast cardiac
magnetic resonance (CMR) images. HyperCMR enhances the existing PromptMR model
by incorporating advanced loss functions, notably the innovative Eagle Loss,
which is specifically designed to recover missing high-frequency information in
undersampled k-space. Extensive experiments conducted on the CMRxRecon2024
challenge dataset demonstrate that HyperCMR consistently outperforms the
baseline across multiple evaluation metrics, achieving superior SSIM and PSNR
scores. |
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DOI: | 10.48550/arxiv.2410.03624 |