Abstract #3623
Pyramidal representation of block Hankel structured low rank matrix (PRESTO) for high performance parallel MRI
Kyong Hwan Jin 1 , Dongwook Lee 1 , and Jong Chul Ye 1
1
Dept. of Bio and Brain Engineering, KAIST,
Daejeon, Daejeon, Korea
In this paper, we propose a novel parallel imaging
method called PRESTO (pyramidal representation of block
Hankel structure low rank matrix) that do not require
any calibration data but still outperform all the
existing parallel imaging methods such as GRAPPA, SAKE
(irregularly sampled k-space without calibration
region), etc. In multi coil k-space, we reveal that the
set of k-space data from several multi coils have novel
annihilation properties between different coils as well
as within coils. These annihilation properties lead us
to a block Hankel structured matrix whose rank should be
low dimensional. Accordingly, similar to SAKE, the
parallel imaging problem becomes a low rank matrix
completion of missing k-space data. However, unlike the
SAKE, which exploits the low rankness from all k-space
data or needs to combine E-SPIRiT to reduce the
complexity, we demonstrate that the low rankness needs
to be exploited in a pyramidal representation of block
Hankel structured matrix to improve image quality as
well as to reduce the complexity.
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