Optimization methods for magnetic resonance image reconstruction: Key models and optimization algorithms
JA Fessler - IEEE signal processing magazine, 2020 - ieeexplore.ieee.org
The development of compressed-sensing (CS) methods for magnetic resonance (MR)
image reconstruction led to an explosion of research on models and optimization algorithms …
image reconstruction led to an explosion of research on models and optimization algorithms …
[PDF][PDF] Learning-Based Frequency Estimation Algorithms.
Estimating the frequencies of elements in a data stream is a fundamental task in data
analysis and machine learning. The problem is typically addressed using streaming …
analysis and machine learning. The problem is typically addressed using streaming …
Deep-learning-based optimization of the under-sampling pattern in MRI
In compressed sensing MRI (CS-MRI), k-space measurements are under-sampled to
achieve accelerated scan times. CS-MRI presents two fundamental problems:(1) where to …
achieve accelerated scan times. CS-MRI presents two fundamental problems:(1) where to …
Learning-based compressive MRI
In the area of magnetic resonance imaging (MRI), an extensive range of non-linear
reconstruction algorithms has been proposed which can be used with general Fourier …
reconstruction algorithms has been proposed which can be used with general Fourier …
Learning space partitions for nearest neighbor search
Space partitions of $\mathbb {R}^ d $ underlie a vast and important class of fast nearest
neighbor search (NNS) algorithms. Inspired by recent theoretical work on NNS for general …
neighbor search (NNS) algorithms. Inspired by recent theoretical work on NNS for general …
Learning-based optimization of the under-sampling pattern in MRI
Abstract Acquisition of Magnetic Resonance Imaging (MRI) scans can be accelerated by
under-sampling in k-space (ie, the Fourier domain). In this paper, we consider the problem …
under-sampling in k-space (ie, the Fourier domain). In this paper, we consider the problem …
Theoretical perspectives on deep learning methods in inverse problems
In recent years, there have been significant advances in the use of deep learning methods in
inverse problems such as denoising, compressive sensing, inpainting, and super-resolution …
inverse problems such as denoising, compressive sensing, inpainting, and super-resolution …
Learning-based low-rank approximations
We introduce a “learning-based” algorithm for the low-rank decomposition problem: given
an $ n\times d $ matrix $ A $, and a parameter $ k $, compute a rank-$ k $ matrix $ A'$ that …
an $ n\times d $ matrix $ A $, and a parameter $ k $, compute a rank-$ k $ matrix $ A'$ that …
Optimizing full 3d sparkling trajectories for high-resolution magnetic resonance imaging
The Spreading Projection Algorithm for Rapid K-space sampLING, or SPARKLING, is an
optimization-driven method that has been recently introduced for accelerated 2D MRI using …
optimization-driven method that has been recently introduced for accelerated 2D MRI using …
Learning a compressed sensing measurement matrix via gradient unrolling
Linear encoding of sparse vectors is widely popular, but is commonly data-independent–
missing any possible extra (but a priori unknown) structure beyond sparsity. In this paper we …
missing any possible extra (but a priori unknown) structure beyond sparsity. In this paper we …