Publication | Closed Access
Adaptive sampling design for compressed sensing MRI
97
Citations
6
References
2011
Year
Unknown Venue
Accurate ReconstructionsImage ReconstructionSparse RepresentationSparse ImagingEngineeringMedical ImagingMr ImagesReconstruction TechniqueUndersampled Cs MriCompressive SensingBiomedical ImagingSignal ReconstructionAdaptive Sampling DesignInverse ProblemsComputational ImagingMedical Image ComputingRadiologyHealth Sciences
Compressed Sensing (CS) takes advantage of the sparsity of MR images in certain bases or dictionaries to obtain accurate reconstructions from undersampled k-space data. The (pseudo) random sampling schemes used most often for CS may have good theoretical asymptotic properties; however, with limited data they may be far from optimal. In this paper, we propose a novel framework for improved adaptive sampling schemes for highly undersampled CS MRI. While the proposed framework is general, we apply it with a recently proposed MRI reconstruction algorithm employing adaptive image-patch based sparsifying dictionaries. Numerical experiments demonstrate up to 7 dB improvements in reconstruction PSNR using the adapted sampling scheme, on top of the large improvements reported in our previous work for the adaptive patch-based reconstruction scheme over analytical sparsifying transforms.
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