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Bi-Linear Modeling of Data Manifolds for Dynamic-MRI Recovery

机译:用于动态MRI恢复的数据流形的双线性建模

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This paper puts forth a novel bi-linear modeling framework for data recovery via manifold-learning and sparse-approximation arguments and considers its application to dynamic magnetic-resonance imaging (dMRI). Each temporal-domain MR image is viewed as a point that lies onto or close to a smooth manifold, and landmark points are identified to describe the point cloud concisely. To facilitate computations, a dimensionality reduction module generates low-dimensional/compressed renditions of the landmark points. Recovery of high-fidelity MRI data is realized by solving a non-convex minimization task for the linear decompression operator and affine combinations of landmark points which locally approximate the latent manifold geometry. An algorithm with guaranteed convergence to stationary solutions of the non-convex minimization task is also provided. The aforementioned framework exploits the underlying spatio-temporal patterns and geometry of the acquired data without any prior training on external data or information. Extensive numerical results on simulated as well as real cardiac-cine MRI data illustrate noteworthy improvements of the advocated machine-learning framework over state-of-the-art reconstruction techniques.
机译:本文提出了一种新颖的双线性建模框架,该框架通过流形学习和稀疏近似参数进行数据恢复,并考虑了其在动态磁共振成像(dMRI)中的应用。每个时域MR图像都被视为位于平滑流形上或附近的点,并且标识了界标点以简洁地描述点云。为了便于计算,降维模块生成界标点的低维/压缩形式。高保真MRI数据的恢复是通过解决线性减压算子的非凸最小化任务和局部近似于潜在歧管几何形状的界标点的仿射组合而实现的。还提供了一种保证收敛到非凸最小化任务的平稳解的算法。前述框架利用了所获取数据的潜在时空模式和几何形状,而无需事先对外部数据或信息进行培训。在模拟的和实际的心脏MRI数据上的大量数值结果表明,与最新的重建技术相比,值得提倡的机器学习框架得到了显着改进。

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