Compressed sensing magnetic resonance image reconstruction algorithms :
نام عام مواد
[Book]
ساير اطلاعات عنواني
a convex optimization approach /
نام نخستين پديدآور
Bhabesh Deka, Sumit Datta.
وضعیت نشر و پخش و غیره
محل نشرو پخش و غیره
Singapore :
نام ناشر، پخش کننده و غيره
Springer,
تاریخ نشرو بخش و غیره
[2019]
مشخصات ظاهری
نام خاص و کميت اثر
1 online resource (133 pages)
فروست
عنوان فروست
Springer Series on Bio- and Neurosystems ;
مشخصه جلد
v. 9
یادداشتهای مربوط به کتابنامه ، واژه نامه و نمایه های داخل اثر
متن يادداشت
Includes bibliographical references.
یادداشتهای مربوط به مندرجات
متن يادداشت
Intro; Preface; Acknowledgements; Contents; About the Authors; 1 Introduction to Compressed Sensing Magnetic Resonance Imaging; 1.1 Introduction to MRI; 1.2 MRI Data Acquisition; 1.2.1 Single-Channel MRI; 1.2.2 Multichannel (or Parallel) MRI; 1.3 MR Image Contrast; 1.3.1 Relaxation Time; 1.3.2 Repetition Time; 1.3.3 Echo Time; 1.4 Types of MR Images; 1.4.1 T1-Weighted Image; 1.4.2 T2-Weighted Image; 1.4.3 PD-Weighted Image; 1.5 Compressed Sensing in MRI; 1.6 Essentials of Sparse MRI; 1.6.1 Sparsity of MR Images; 1.6.2 Mutual Coherence; 1.7 Design of CS-MRI Sampling Pattern.
متن يادداشت
1.7.1 Variable Density Undersampling Pattern1.7.2 Undersampling Pattern for Clinical MRI; 1.8 Some Implementations of CS-MRI for Clinical Applications; 1.9 Conclusions; References; 2 CS-MRI Reconstruction Problem; 2.1 Introduction; 2.2 CS-MRI Problem Formulation; 2.3 Conclusions; References; 3 Fast Algorithms for Compressed Sensing MRI Reconstruction; 3.1 Introduction; 3.2 Operator Splitting Method; 3.2.1 Iterative Shrinkage-Thresholding Algorithm; 3.2.2 Two-Step Iterative Shrinkage-Thresholding Algorithm; 3.2.3 Sparse Reconstruction by Separable Approximation.
متن يادداشت
3.2.4 Fast Iterative Shrinkage-Thresholding Algorithm3.2.5 Total Variation ell1 Compressed MR Imaging; 3.3 Variable Splitting Method; 3.3.1 Augmented Lagrange Multiplier Method; 3.3.2 Alternating Direction Method of Multipliers; 3.3.3 Algorithm Based on Bregman Iteration; 3.4 Composite Splitting; 3.4.1 Composite Splitting Denoising; 3.4.2 Composite Splitting Algorithm (CSA); 3.4.3 Fast Composite Splitting Algorithm (FCSA); 3.5 Non-splitting Method; 3.5.1 Nonlinear Conjugate Gradient Method; 3.5.2 Gradient Projection for Sparse Reconstruction; 3.5.3 Truncated Newton Interior-Point Method.
متن يادداشت
3.6 ConclusionsReferences; 4 Performance Evaluation of CS-MRI Reconstruction Algorithms; 4.1 Introduction; 4.2 Simulation Setup; 4.2.1 MRI Database Selection; 4.2.2 Selection of Parameters; 4.3 Performance Evaluation; 4.4 Experiments on Convergence; 4.5 Performance Evaluation of Iteratively Weighted Algorithms; 4.6 Conclusions; References; 5 CS-MRI Benchmarks and Current Trends; 5.1 Introduction; 5.2 Compressed Sensing for Clinical MRI; 5.3 CS-MRI Reconstruction; 5.3.1 k-Space Undersampling in Practice and Sparsifying Transform; 5.3.2 Implementations; 5.4 Image Quality Assessment.
متن يادداشت
5.5 Computational Complexity5.6 Current Trends; 5.6.1 Interpolated CS-MRI (iCS-MRI) Reconstruction; 5.6.2 Fast CS-MRI Hardware Implementation; 5.7 Future Research Directions; 5.8 Conclusions; References; 6 Applications of CS-MRI in Bioinformatics and Neuroinformatics; 6.1 Introduction; 6.2 MRI in Bioinformatics; 6.2.1 Whole-Body MRI; 6.2.2 Magnetic Resonance Spectroscopy Imaging; 6.2.3 Diffusion-Weighted MRI; 6.2.4 Magnetic Resonance Angiography for Body Imaging; 6.3 MRI in Neuroinformatics; 6.3.1 Brain MRI; 6.3.2 Functional MRI; 6.3.3 Diffusion Weighted Brain MRI.
بدون عنوان
0
بدون عنوان
8
بدون عنوان
8
بدون عنوان
8
بدون عنوان
8
یادداشتهای مربوط به خلاصه یا چکیده
متن يادداشت
This book presents a comprehensive review of the recent developments in fast L1-norm regularization-based compressed sensing (CS) magnetic resonance image reconstruction algorithms. Compressed sensing magnetic resonance imaging (CS-MRI) is able to reduce the scan time of MRI considerably as it is possible to reconstruct MR images from only a few measurements in the k-space; far below the requirements of the Nyquist sampling rate. L1-norm-based regularization problems can be solved efficiently using the state-of-the-art convex optimization techniques, which in general outperform the greedy techniques in terms of quality of reconstructions. Recently, fast convex optimization based reconstruction algorithms have been developed which are also able to achieve the benchmarks for the use of CS-MRI in clinical practice. This book enables graduate students, researchers, and medical practitioners working in the field of medical image processing, particularly in MRI to understand the need for the CS in MRI, and thereby how it could revolutionize the soft tissue imaging to benefit healthcare technology without making major changes in the existing scanner hardware. It would be particularly useful for researchers who have just entered into the exciting field of CS-MRI and would like to quickly go through the developments to date without diving into the detailed mathematical analysis. Finally, it also discusses recent trends and future research directions for implementation of CS-MRI in clinical practice, particularly in Bio- and Neuro-informatics applications.
یادداشتهای مربوط به سفارشات
منبع سفارش / آدرس اشتراک
Springer Nature
شماره انبار
com.springer.onix.9789811335976
ویراست دیگر از اثر در قالب دیگر رسانه
عنوان
Compressed Sensing Magnetic Resonance Image Reconstruction Algorithms : A Convex Optimization Approach.
شماره استاندارد بين المللي کتاب و موسيقي
9789811335969
موضوع (اسم عام یاعبارت اسمی عام)
موضوع مستند نشده
Compressed sensing (Telecommunication)
موضوع مستند نشده
Magnetic resonance imaging.
موضوع مستند نشده
Compressed sensing (Telecommunication)
موضوع مستند نشده
Magnetic resonance imaging.
مقوله موضوعی
موضوع مستند نشده
TEC008000
موضوع مستند نشده
TTBM
موضوع مستند نشده
TTBM
موضوع مستند نشده
UYS
رده بندی ديویی
شماره
616
.
07/548
ويراست
23
رده بندی کنگره
شماره رده
QC762
.
6
.
M34
نام شخص به منزله سر شناسه - (مسئولیت معنوی درجه اول )