GRAPPA linearly combines the undersampled k-space signals to estimate the missing k-space signals where the coeffi-cients are obtained by fitting to some auto-calibration signals (ACS) sampled with Nyquist rate based on the shift-invariant property. At high acceleration factors, GRAPPA reconstruction can suffer from a high level of noise even with a large number of auto-calibration signals. In this work, we propose a nonlin-ear method to improve GRAPPA. The method is based on the so-called kernel method which is widely used in machine learning. Specifically, the undersampled k-space signals are mapped through a nonlinear transform to a high-dimensional feature space, and then linearly combined to reconstruct the missing k-space data. The li...
In MRI, it is more desirable to scan less data as possible because it reduces MRI scanning time. We ...
Abstract—The interpolation of missing spatial frequencies through the generalized auto-calibrating p...
An approach to Magnetic Resonance (MR) image reconstruction from undersampled data is proposed. Unde...
GRAPPA [1] has emerged to be a popular k-space-based parallel imaging reconstruction technique. GRAP...
This paper analyzes the famous GRAPPA algorithm, which is one of most widely used image reconstructi...
For the reconstruction of 3D MRI data that are accelerated along the two phase-encoding directions, ...
The generalized auto-calibrating partially parallel acquisition (GRAPPA) is an auto-calibrating para...
Accelerating magnetic resonance imaging (MRI) by re-ducing the number of acquired k-space scan lines...
Abstract—The amount of calibration data needed to produce images of adequate quality can prevent aut...
Both compressed sensing (CS) and parallel imaging (PI) can be used to accelerate magnetic resonance ...
A novel coefficient penalized regularization method for generalized autocalibrating partially parall...
The extended version of the generalized autocalibrating par-tially parallel acquisition (GRAPPA) tec...
Generalized autocalibrating partially parallel acquisition (GRAPPA) has been a widely used parallel ...
Generalized autocalibrating partially parallel acquisition (GRAPPA) has been a widely used parallel ...
Purpose: In partially parallel imaging, most k-space-based reconstruction algorithms such as GRAPPA ...
In MRI, it is more desirable to scan less data as possible because it reduces MRI scanning time. We ...
Abstract—The interpolation of missing spatial frequencies through the generalized auto-calibrating p...
An approach to Magnetic Resonance (MR) image reconstruction from undersampled data is proposed. Unde...
GRAPPA [1] has emerged to be a popular k-space-based parallel imaging reconstruction technique. GRAP...
This paper analyzes the famous GRAPPA algorithm, which is one of most widely used image reconstructi...
For the reconstruction of 3D MRI data that are accelerated along the two phase-encoding directions, ...
The generalized auto-calibrating partially parallel acquisition (GRAPPA) is an auto-calibrating para...
Accelerating magnetic resonance imaging (MRI) by re-ducing the number of acquired k-space scan lines...
Abstract—The amount of calibration data needed to produce images of adequate quality can prevent aut...
Both compressed sensing (CS) and parallel imaging (PI) can be used to accelerate magnetic resonance ...
A novel coefficient penalized regularization method for generalized autocalibrating partially parall...
The extended version of the generalized autocalibrating par-tially parallel acquisition (GRAPPA) tec...
Generalized autocalibrating partially parallel acquisition (GRAPPA) has been a widely used parallel ...
Generalized autocalibrating partially parallel acquisition (GRAPPA) has been a widely used parallel ...
Purpose: In partially parallel imaging, most k-space-based reconstruction algorithms such as GRAPPA ...
In MRI, it is more desirable to scan less data as possible because it reduces MRI scanning time. We ...
Abstract—The interpolation of missing spatial frequencies through the generalized auto-calibrating p...
An approach to Magnetic Resonance (MR) image reconstruction from undersampled data is proposed. Unde...