CVITLGMLOct 27, 2019

Structured Low-Rank Algorithms: Theory, MR Applications, and Links to Machine Learning

arXiv:1910.12162v163 citations
Originality Synthesis-oriented
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This incremental work provides a comprehensive review for researchers in signal processing and MRI, highlighting flexible methods to exploit signal properties not easily captured by existing sparse and low-rank strategies.

The survey reviews a structured low-rank matrix completion framework for recovering continuous domain signals from few non-uniform measurements, demonstrating its utility in magnetic resonance imaging applications such as accelerated imaging and artifact correction.

In this survey, we provide a detailed review of recent advances in the recovery of continuous domain multidimensional signals from their few non-uniform (multichannel) measurements using structured low-rank matrix completion formulation. This framework is centered on the fundamental duality between the compactness (e.g., sparsity) of the continuous signal and the rank of a structured matrix, whose entries are functions of the signal. This property enables the reformulation of the signal recovery as a low-rank structured matrix completion, which comes with performance guarantees. We will also review fast algorithms that are comparable in complexity to current compressed sensing methods, which enables the application of the framework to large-scale magnetic resonance (MR) recovery problems. The remarkable flexibility of the formulation can be used to exploit signal properties that are difficult to capture by current sparse and low-rank optimization strategies. We demonstrate the utility of the framework in a wide range of MR imaging (MRI) applications, including highly accelerated imaging, calibration-free acquisition, MR artifact correction, and ungated dynamic MRI.

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