LGCVIVMLFeb 27, 2020

Kernel Bi-Linear Modeling for Reconstructing Data on Manifolds: The Dynamic-MRI Case

arXiv:2002.11885v11 citations
Originality Incremental advance
AI Analysis

This addresses data recovery in dynamic MRI, an incremental improvement for medical imaging applications.

The paper tackles the problem of reconstructing dynamic MRI data on manifolds by proposing a kernel-based framework that formulates data recovery as a bi-linear inverse problem, achieving competitive results against state-of-the-art methods on synthetic data.

This paper establishes a kernel-based framework for reconstructing data on manifolds, tailored to fit the dynamic-(d)MRI-data recovery problem. The proposed methodology exploits simple tangent-space geometries of manifolds in reproducing kernel Hilbert spaces and follows classical kernel-approximation arguments to form the data-recovery task as a bi-linear inverse problem. Departing from mainstream approaches, the proposed methodology uses no training data, employs no graph Laplacian matrix to penalize the optimization task, uses no costly (kernel) pre-imaging step to map feature points back to the input space, and utilizes complex-valued kernel functions to account for k-space data. The framework is validated on synthetically generated dMRI data, where comparisons against state-of-the-art schemes highlight the rich potential of the proposed approach in data-recovery problems.

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