Please use this identifier to cite or link to this item: http://localhost:80/xmlui/handle/123456789/13709
Title: A Computationally Efficient MASTeR-based Compressed Sensing Reconstruction for Dynamic MRI
Authors: Salman, M. I.
Obaid Ullah, M.
Awan, I. A.
Keywords: Compressed Sensing
Sparse Representation
Least Square Data Fitting
ℓ1-norm regularization
Total Variation (TV) Minimization
Spatio-Temporal Regularization
Composite Problem
Issue Date: 3-Jan-2017
Publisher: Taxila:University of Engineering and Technology(UET)Taxila, Pakistan
Citation: Salman, M. I., Ullah, M. O., & Awan, I. A. (2017). A Computationally Efficient MASTeR-based Compressed Sensing Reconstruction for Dynamic MRI. University of Engineering and Technology Taxila. Technical Journal, 22(1), 18.
Abstract: State-of-the-art compressed sensing based algorithms recover sparse signals from under sampled incoherent measurements by exploiting their spatial as well as temporal structures. A compressed sensing based dynamic MRI reconstruction algorithm called MASTeR (Motion-Adaptive Spatio-Temporal Regularization) has shown great improvement in spatio-temporal resolution. MASTeR uses motionadaptive linear transformations between neighboring images to model temporal sparsity. In this paper, a computationally efficient MASTeR-based scheme is presented that achieves the same image quality but in less time. The proposed algorithm minimizes a linear combination of three terms (ℓ1-norm, total-variation andleast-square) for initial image reconstruction. Subsequently, least-square and ℓ1-norm with ME/MC i.e., motion estimation and compensation are used to reduce the motion artifacts. The proposed scheme is analyzed for breath-held, steady-state-free-precession MRI scans with prospective cardiac gating
URI: http://142.54.178.187:9060/xmlui/handle/123456789/13709
ISSN: 2313-7770
Appears in Collections:Issue No. 1



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