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Spatiotemporal dictionary learning for undersampled dynamic MRI reconstruction via joint frame-based and dictionary-based sparsity

机译:通过联合基于帧和基于字典的稀疏性来进行欠采样动态MRI重建的时空词典学习

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Image reconstruction using compressed sensing relies on sparse representations of signals in some dictionary. Current state-of-the-art dictionary-learning methods are designed for spatial images and fail to systematically generalize to dynamic imaging scenarios where the spatiotemporal data, and thereby the spatiotemporal dictionary atoms, exhibit joint coherence in space and time leading to low rank. This paper proposes a novel method for learning low-rank spatiotemporal dictionaries. While leading compressed-sensing reconstruction methods employ either l1 analysis or synthesis approaches using mathematical frames (e.g. overcomplete wavelets), approaches using dictionary learning (very recent) ignore the frame-based l1-sparsity constraints. This paper proposes a novel method combining frame-based l1 analysis with spatiotemporal-dictionary based sparsity (related to l1 synthesis). The results demonstrate improved reconstructions, on simulated and clinical highly-undersampled dynamic images, using the combined approach.
机译:使用压缩感测的图像重建依赖于某些字典中信号的稀疏表示。当前最先进的字典学习方法是为空间图像设计的,无法系统地推广到动态成像场景,在该场景中,时空数据以及时空字典原子在时空上表现出连贯的连贯性,从而导致排名较低。本文提出了一种学习低级时空词典的新方法。领先的压缩感知重建方法采用数学分析框架(例如,超完备的小波)进行l1分析或综合方法,而使用字典学习(最近)的方法则忽略了基于框架的l1稀疏约束。本文提出了一种新的方法,将基于帧的l1分析与基于时空字典的稀疏性(与l1合成有关)相结合。结果表明,使用组合方法可以对模拟和临床高度欠采样的动态图像进行改进的重建。

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