MURF:相互增强的多模式图像配准与融合

IF 18.6
Han Xu;Jiteng Yuan;Jiayi Ma
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引用次数: 5

摘要

现有的图像融合方法通常局限于对齐的源图像,并且在图像未对齐时必须“容忍”视差。同时,不同模态之间的巨大差异对多模态图像配准提出了重大挑战。这项研究提出了一种称为MURF的新方法,首次将图像配准和融合相互加强,而不是将其视为单独的问题。MURF利用了三个模块:共享信息提取模块(SIEM)、多尺度粗配准模块(MCRM)和精细配准与融合模块(F2M)。登记是以粗略到精细的方式进行的。在粗配准过程中,SIEM首先将多模态图像转换为单模态共享信息,以消除模态方差。然后,MCRM逐步校正全局刚性视差。随后,在F2M中均匀地实现了用于修复局部非刚性偏移的精细配准和图像融合。融合后的图像提供反馈以提高配准精度,改进后的配准结果进一步提高了融合结果。对于图像融合,我们尝试将纹理增强纳入图像融合,而不是在现有方法中仅保留原始源信息。我们测试了四种类型的多模态数据(RGB-IR、RGB-NIR、PET-MRI和CT-MRI)。大量的配准和融合结果验证了MURF的优越性和通用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MURF: Mutually Reinforcing Multi-Modal Image Registration and Fusion
Existing image fusion methods are typically limited to aligned source images and have to “tolerate” parallaxes when images are unaligned. Simultaneously, the large variances between different modalities pose a significant challenge for multi-modal image registration. This study proposes a novel method called MURF, where for the first time, image registration and fusion are mutually reinforced rather than being treated as separate issues. MURF leverages three modules: shared information extraction module (SIEM), multi-scale coarse registration module (MCRM), and fine registration and fusion module (F2M). The registration is carried out in a coarse-to-fine manner. During coarse registration, SIEM first transforms multi-modal images into mono-modal shared information to eliminate the modal variances. Then, MCRM progressively corrects the global rigid parallaxes. Subsequently, fine registration to repair local non-rigid offsets and image fusion are uniformly implemented in F2M. The fused image provides feedback to improve registration accuracy, and the improved registration result further improves the fusion result. For image fusion, rather than solely preserving the original source information in existing methods, we attempt to incorporate texture enhancement into image fusion. We test on four types of multi-modal data (RGB-IR, RGB-NIR, PET-MRI, and CT-MRI). Extensive registration and fusion results validate the superiority and universality of MURF.
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