Abstract #3407
Simultaneuos Magnitude and Phase Regularization in MR Compressed Sensing using Multi-frame FREBAS Transform
Satoshi Ito 1 , Mone Shibuya 1 , Kenji Ito 1 , and Yoshifumi Yamada 1
1
Utsunomiya University, Utsunomiya, Tochigi,
Japan
It is difficults to apply CS to images with rapid
spatial phase variations, since not only the magnitude
but also phase regularization is required in the CS
framework. An iterative MRI reconstruction with separate
magnitude and phase regularization was proposed for
applications where magnitude and phase maps are both of
interest. Since this method requires the approximation
of phase regularizer to cope with phase unwrapping
problem, it is roughly 10 times slower than conventional
CS and the convergence is not guaranteed. In this
article we propose a novel image reconstruction scheme
for CS-MRI in which phase regularizer or symmetrical
sampling trajectory are not required in the rather
standard CS reconstruction scheme, but highly robust to
rapid phase changes. The proposed method uses
multi-frame complex transforms to introduce sparseness
for the complex image data.
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