论文标题
无监督的自适应神经网络正则加速径向Cine MRI
Unsupervised Adaptive Neural Network Regularization for Accelerated Radial Cine MRI
论文作者
论文摘要
在这项工作中,我们提出了一种基于对浅层卷积神经网络的无人无监督学习的2D radial Cine MRI的迭代重建方案(单独 - 对网络的自适应学习)。对网络进行了训练,可在重建过程中近似溶液当前估计值的斑块。通过施加浅网络拓扑并限制学习过滤器的$ l_2 $ norm,网络的表示功率受到限制,以免能够恢复噪声。因此,可以解释网络以执行贴片的低维近似,以稳定反转过程。我们将提出的重建方案与两种无基础的无真实重建方法进行了比较,即一种众所周知的总变化(TV)最小化和无监督的自适应词典学习(DIC)方法。所提出的方法在所有报告的定量措施方面都优于两种方法。此外,与DIC相反,DIC的稀疏近似涉及复杂优化问题的解决方案,仅仅需要通过浅网络的所有斑块向前传递,因此显着加速了重建。
In this work, we propose an iterative reconstruction scheme (ALONE - Adaptive Learning Of NEtworks) for 2D radial cine MRI based on ground truth-free unsupervised learning of shallow convolutional neural networks. The network is trained to approximate patches of the current estimate of the solution during the reconstruction. By imposing a shallow network topology and constraining the $L_2$-norm of the learned filters, the network's representation power is limited in order not to be able to recover noise. Therefore, the network can be interpreted to perform a low dimensional approximation of the patches for stabilizing the inversion process. We compare the proposed reconstruction scheme to two ground truth-free reconstruction methods, namely a well known Total Variation (TV) minimization and an unsupervised adaptive Dictionary Learning (DIC) method. The proposed method outperforms both methods with respect to all reported quantitative measures. Further, in contrast to DIC, where the sparse approximation of the patches involves the solution of a complex optimization problem, ALONE only requires a forward pass of all patches through the shallow network and therefore significantly accelerates the reconstruction.