Magnetic resonance (MR) image acquisition is an inherently prolonged process, whose acceleration has long been the subject of research. This is commonly achieved by obtaining multiple undersampled images, simultaneously, through parallel imaging. In this paper, we propose the Dual-Octave Network (DONet), which is capable of learning multi-scale spatial-frequency features from both the real and imaginary components of MR data, for fast parallel MR image reconstruction. More specifically, our DONet consists of a series of Dual-Octave convolutions (Dual-OctConv), which are connected in a dense manner for better reuse of features. In each Dual-OctConv, the input feature maps and convolutional kernels are first split into two components (ie, real and imaginary), and then divided into four groups according to their spatial frequencies. Then, our Dual-OctConv conducts intra-group information updating and inter-group information exchange to aggregate the contextual information across different groups. Our framework provides three appealing benefits: (i) It encourages information interaction and fusion between the real and imaginary components at various spatial frequencies to achieve richer representational capacity. (ii) The dense connections between the real and imaginary groups in each Dual-OctConv make the propagation of features more efficient by feature reuse. (iii) DONet enlarges the receptive field by learning multiple spatial-frequency features of both the real and imaginary components. Extensive experiments on two popular datasets (ie, clinical knee and fastMRI), under different undersampling patterns and acceleration factors, demonstrate the superiority of our model in accelerated parallel MR image reconstruction.
翻译:磁共振图像采集是一个固有的长期过程,其加速率长期以来一直是研究的主题。这通常是通过同时通过平行成像获得多个未充分取样的图像来实现的。在本文件中,我们提议双晶网(DONet),它能够从数据真实和想象中学习多尺度的空间频率特征,以便快速平行的光共振图像重建。更具体地说,我们的DONET由一系列双晶形相接演(Dual-Oct Conv)组成,它们以密集的方式连接起来,以便更好地再利用各种特征。在每个双氧Conv中,输入式样图和卷状内内核都首先分为两个组成部分(i、真实和想象),然后根据空间频率的频率分为四个组。然后,我们的双晶感会进行集团内部信息更新和组间信息交流,以汇总不同组别的背景信息。我们的框架提供了三个令人兴奋的好处:(i)鼓励在不同空间频率下真实和想象的图像组件之间进行信息互动和融合。(i)通过不同层层层的不断变频的模型,通过两个组合进行真实的不断变现的磁的磁的磁体和变换的磁体(ral-x) 显示每个磁的磁的磁的磁的磁的磁的磁体结构上的深度连接。