Magnetic resonance (MR) image acquisition is an inherently prolonged process, whose acceleration by obtaining multiple undersampled images simultaneously through parallel imaging has always been the subject of research. In this paper, we propose the Dual-Octave Convolution (Dual-OctConv), which is capable of learning multi-scale spatial-frequency features from both real and imaginary components, for fast parallel MR image reconstruction. By reformulating the complex operations using octave convolutions, our model shows a strong ability to capture richer representations of MR images, while at the same time greatly reducing the spatial redundancy. More specifically, the input feature maps and convolutional kernels are first split into two components (i.e., real and imaginary), which are 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 two appealing benefits: (i) it encourages interactions between real and imaginary components at various spatial frequencies to achieve richer representational capacity, and (ii) it enlarges the receptive field by learning multiple spatial-frequency features of both the real and imaginary components. We evaluate the performance of the proposed model on the acceleration of multi-coil MR image reconstruction. Extensive experiments are conducted on an {in vivo} knee dataset under different undersampling patterns and acceleration factors. The experimental results demonstrate the superiority of our model in accelerated parallel MR image reconstruction. Our code is available at: github.com/chunmeifeng/Dual-OctConv.
翻译:磁共振图像的获取是一个固有的长期过程,通过同时通过平行成像获得多个未充分取样的图像而加速速度一直是研究的主题。在本论文中,我们提议采用“双电磁共振”(Dual-Oct Conv),它能够从真实和想象的成份中学习多尺度的空间频率特征,以便快速平行进行光共振图像的重建。通过使用“八演”对复杂操作进行重塑,我们的模型显示出捕捉光共振图像更富的表达方式的强大能力,同时极大地减少空间冗余。更具体地说,输入地貌图和动态内核是先分成两个组成部分(即真实和想象的),然后根据空间频率分为四个组。然后,我们的“双电共振”进行集团内部信息更新和群体间信息交流,以汇总不同组别的背景信息。我们的框架提供了两个令人钦佩的好处:(一)它鼓励各种空间频率中真实和想象的成像成份之间的互动,以实现更丰富的代表能力。以及(二)它扩大了可容纳的域域域域域域域域内,通过学习多空基级的图像的加速度重建功能的模型,在我们的模型中进行我们模拟的模型的模型的模拟的模拟的模拟和模拟的加速化的模拟中进行。