IMAGE FUSION NETWORK FOR DUAL-MODAL RESTORATION

INVERSE PROBLEMS AND IMAGING(2021)

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摘要
In recent years multi-modal data processing methods have gained considerable research interest as technological advancements in imaging, com-puting, and data storage have made the collection of redundant, multi-modal data more commonplace. In this work we present an image restoration method tailored for scenarios where pre-existing, high-quality images from different modalities or contrasts are available in addition to the target image. Our method is based on a novel network architecture which combines the benefits of traditional multi-scale signal representation, such as wavelets, with more recent concepts from data fusion methods. Results from numerical simulations in which T1-weighted MRI images are used to restore noisy and undersampled T2-weighted images demonstrate that the proposed network successfully uti-lizes information from high-quality reference images to improve the restoration quality of the target image beyond that of existing popular methods.
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关键词
Image restoration network, dual-modal imaging, multi-scale image representation, information fusion
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