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A01=Joseph Suresh Paul
A01=Raji Susan Mathew
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Age Group_Uncategorized
Author_Joseph Suresh Paul
Author_Raji Susan Mathew
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Category1=Non-Fiction
Category=PHVN
Coil Sensitivity
COP=United States
Dataset II
DCE Mri
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Dynamic Mri
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eq_science
GCV Function
Image Analysis
Interior Point Methods
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Lasso Problem
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Low Rank Property
Magnetic Resonance
Matrix Completion Problem
Medical Imaging
Nuclear Norm
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Parallel Magnetic Resonance Imaging
Pe Line
Perturbation Step
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Regularization Parameter
Regularization Parameter Selection
Residual Error Norm
RF Pulse
ROF Model
SNR Condition
SNR Variation
softlaunch
Sure
Tikhonov Regularization
Tv Regularization
Wavelet Coefficients

Regularized Image Reconstruction in Parallel MRI with MATLAB

English

By (author): Joseph Suresh Paul Raji Susan Mathew

Regularization becomes an integral part of the reconstruction process in accelerated parallel magnetic resonance imaging (pMRI) due to the need for utilizing the most discriminative information in the form of parsimonious models to generate high quality images with reduced noise and artifacts. Apart from providing a detailed overview and implementation details of various pMRI reconstruction methods, Regularized image reconstruction in parallel MRI with MATLAB examples interprets regularized image reconstruction in pMRI as a means to effectively control the balance between two specific types of error signals to either improve the accuracy in estimation of missing samples, or speed up the estimation process. The first type corresponds to the modeling error between acquired and their estimated values. The second type arises due to the perturbation of k-space values in autocalibration methods or sparse approximation in the compressed sensing based reconstruction model.

Features:

  • Provides details for optimizing regularization parameters in each type of reconstruction.
  • Presents comparison of regularization approaches for each type of pMRI reconstruction.
  • Includes discussion of case studies using clinically acquired data.
  • MATLAB codes are provided for each reconstruction type.
  • Contains method-wise description of adapting regularization to optimize speed and accuracy.

This book serves as a reference material for researchers and students involved in development of pMRI reconstruction methods. Industry practitioners concerned with how to apply regularization in pMRI reconstruction will find this book most useful.

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€179.80
A01=Joseph Suresh PaulA01=Raji Susan MathewAge Group_UncategorizedAuthor_Joseph Suresh PaulAuthor_Raji Susan Mathewautomatic-updateCategory1=Non-FictionCategory=PHVNCoil SensitivityCOP=United StatesDataset IIDCE MriDelivery_Pre-orderDynamic Mrieq_isMigrated=2eq_non-fictioneq_scienceGCV FunctionImage AnalysisInterior Point MethodsLanguage_EnglishLasso ProblemLow Rank MatrixLow Rank PropertyMagnetic ResonanceMatrix Completion ProblemMedical ImagingNuclear NormPA=Temporarily unavailableParallel Magnetic Resonance ImagingPe LinePerturbation StepPrice_€100 and abovePS=ActiveRegularization ParameterRegularization Parameter SelectionResidual Error NormRF PulseROF ModelSNR ConditionSNR VariationsoftlaunchSureTikhonov RegularizationTv RegularizationWavelet Coefficients

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Product Details
  • Weight: 760g
  • Dimensions: 178 x 254mm
  • Publication Date: 25 Oct 2019
  • Publisher: Taylor & Francis Inc
  • Publication City/Country: US
  • Language: English
  • ISBN13: 9780815361473

About Joseph Suresh PaulRaji Susan Mathew

Joseph Suresh Paul

Joseph Suresh Paul is currently a Professor at the Indian Institute of Information Technology and Management- Kerala (IIITM-K), India. He obtained his Ph.D. degree in Electrical Engineering from the Indian Institute of Technology, Madras, India in the year 2000. His research is focused on MR imaging from the perspective of accelerating image acquisition, with the goal of enhancing clinically relevant features using filters integrated into the reconstruction process. His other interests include mathematical applications to problems in MR image reconstruction, compressed sensing, and super resolution techniques for MRI. He has published a number of articles in peer-reviewed international journals of high repute.

Raji Susan Mathew

Raji Susan Mathew is currently pursuing her Ph.D. degree in the area of MR image reconstruction. She received bachelor degree in Electronics and Communication Engineering from the Mahatma Gandhi university, Kottayam and master's degree in signal processing from the Cochin university of science and technology, Kochi in 2011 and 2013. She is a recipient of the Maulana Azad National Fellowship (MANF) by the University Grants Commission (UGC), India. Her research interests include regularization techniques for MR image reconstruction and Compressed Sensing.

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