Deep learning methods driven by the low-rank regularization have achieved attractive performance in dynamic magnetic resonance (MR) imaging. However, most of these methods represent low-rank prior by hand-crafted nuclear norm, which cannot accurately approximate the low-rank prior over the entire dataset through a fixed regularization parameter. In this paper, we propose a learned low-rank method for dynamic MR imaging. In particular, we unrolled the semi-quadratic splitting method (HQS) algorithm for the partially separable (PS) model to a network, in which the low-rank is adaptively characterized by a learnable null-space transform. Experiments on the cardiac cine dataset show that the proposed model outperforms the state-of-the-art compressed sensing (CS) methods and existing deep learning methods both quantitatively and qualitatively.
翻译:由低级正规化驱动的深层次学习方法在动态磁共振成像中取得了有吸引力的性能,但是,这些方法大多是手工制作的核规范先于低级,无法通过固定的正规化参数准确估计整个数据集之前的低级。在本文中,我们建议了一种有知识的低级动态MR成像方法。特别是,我们将半赤道分解法算法(HQS)的半分离法(HQS)的半分离法(HQS)算法(部分分离(PS)模型)转到一个网络,在这个网络中,低级的低级算法具有可学习的空空转换的适应性特征。对心菜数据集的实验显示,拟议的模型在数量和质量上都超越了最先进的压缩传感器方法和现有的深层学习方法。