Magnetic resonance (MR) imaging produces detailed images of organs and tissues with better contrast, but it suffers from a long acquisition time, which makes the image quality vulnerable to say motion artifacts. Recently, many approaches have been developed to reconstruct full-sampled images from partially observed measurements to accelerate MR imaging. However, most approaches focused on reconstruction over a single modality, neglecting the discovery of correlation knowledge between the different modalities. Here we propose a Multi-modal Aggregation network for mR Image recOnstruction with auxiliary modality (MARIO), which is capable of discovering complementary representations from a fully sampled auxiliary modality, with which to hierarchically guide the reconstruction of a given target modality. This implies that our method can selectively aggregate multi-modal representations for better reconstruction, yielding comprehensive, multi-scale, multi-modal feature fusion. Extensive experiments on IXI and fastMRI datasets demonstrate the superiority of the proposed approach over state-of-the-art MR image reconstruction methods in removing artifacts.
翻译:磁共振成像(MR)产生器官和组织的详细图像,形成更好的对比,但它有很长的获取时间,使图像质量易受到运动文物的描述。最近,已经制定了许多方法,从部分观测到的测量中重建全模图像,以加速MR成像。然而,大多数方法侧重于单一模式的重建,忽视了不同模式之间相关知识的发现。我们在这里建议建立一个多式集成网络,用辅助模式(MARIO)进行 mR图像校准(MARIO),它能够从完全抽样的辅助模式中发现补充性表现,从而在等级上指导特定目标模式的重建。这意味着我们的方法可以有选择地综合多模式的演示,以更好地重建,产生全面、多尺度、多模式的特征聚合。关于IXI和快速MRI数据集的广泛实验表明,拟议的方法优于清除文物方面最先进的MR图像重建方法。