Abstract #1568
Highly Accelerated Dynamic Parallel MRI Exploiting Constrained State-Space Model with Low Rank and Sparsity
Suhyung Park 1 and Jaeseok Park 1
1
Department of Brain and Cognitive
Engineering, Korea University, Seoul, Seoul, Korea
Fast magnetic resonance imaging (MRI) techniques [1-4],
which lead to signal recovery from incomplete data, have
been introduced in dynamic imaging to improve
spatiotemporal resolution without apparent loss of image
quality. In this respect, we propose a novel, highly
accelerated dynamic parallel MRI reconstruction method
exploiting a constrained state space model with low rank
and sparsity while jointly estimating spatiotemporal
kernels and missing signals in k-t space in an iterative
fashion. Spatiotemporal kernels stacked across multiple
time frames are estimated using the low rank constraint
due to the nature of smoothly varying spatiotemporal
correlation in k-t space during calibration, while the
solution is projected onto the reconstructed k-t space
with the sparsity constraint imposed on the estimated
dynamic images in x-f space.
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