Efficient Reconstruction Technique for Multi-Slice CS-MRI Using Novel Interpolation and 2D Sampling Scheme
暂无分享,去创建一个
Muhammad Bilal | Baber Khan | Ahmad Ali | Abdul Jalil | Khizer Mehmood | Maria Murad | A. Jalil | Muhammad Bilal | Ahmad Ali | Khizer Mehmood | Baber Khan | Maria Murad
[1] Junzhou Huang,et al. The benefit of tree sparsity in accelerated MRI , 2014, Medical Image Anal..
[2] Michael B. Wakin,et al. An Introduction To Compressive Sampling [A sensing/sampling paradigm that goes against the common knowledge in data acquisition] , 2008 .
[3] Riccardo Ferrari,et al. Current status of MR imaging in the evaluation of IBD in a pediatric population of patients. , 2009, European journal of radiology.
[4] Guang Yang,et al. Deep De-Aliasing for Fast Compressive Sensing MRI , 2017, ArXiv.
[5] Bhabesh Deka,et al. Interpolated Compressed Sensing for Calibrationless Parallel MRI Reconstruction , 2019, 2019 National Conference on Communications (NCC).
[6] Junzhou Huang,et al. Compressive Sensing MRI with Wavelet Tree Sparsity , 2012, NIPS.
[7] Yaakov Tsaig,et al. Extensions of compressed sensing , 2006, Signal Process..
[8] Junzhou Huang,et al. Efficient MR image reconstruction for compressed MR imaging , 2011, Medical Image Anal..
[9] J. Rodgers,et al. Thirteen ways to look at the correlation coefficient , 1988 .
[10] Kieren Grant Hollingsworth,et al. Reducing acquisition time in clinical MRI by data undersampling and compressed sensing reconstruction , 2015, Physics in medicine and biology.
[11] Guang Yang,et al. Stochastic Deep Compressive Sensing for the Reconstruction of Diffusion Tensor Cardiac MRI , 2018, MICCAI.
[12] Junfeng Yang,et al. A Fast Alternating Direction Method for TVL1-L2 Signal Reconstruction From Partial Fourier Data , 2010, IEEE Journal of Selected Topics in Signal Processing.
[13] Di Guo,et al. Image reconstruction of compressed sensing MRI using graph-based redundant wavelet transform , 2016, Medical Image Anal..
[14] Bhabesh Deka,et al. Multi-channel, Multi-slice, and Multi-contrast Compressed Sensing MRI Using Weighted Forest Sparsity and Joint TV Regularization Priors , 2017, SocProS.
[15] Emmanuel J. Candès,et al. Robust uncertainty principles: exact signal reconstruction from highly incomplete frequency information , 2004, IEEE Transactions on Information Theory.
[16] David Summers,et al. Harvard Whole Brain Atlas: www.med.harvard.edu/AANLIB/home.html , 2003 .
[17] Guang Yang,et al. Adversarial and Perceptual Refinement for Compressed Sensing MRI Reconstruction , 2018, MICCAI.
[18] Sungheon Kim,et al. Golden‐angle radial sparse parallel MRI: Combination of compressed sensing, parallel imaging, and golden‐angle radial sampling for fast and flexible dynamic volumetric MRI , 2014, Magnetic resonance in medicine.
[19] Junzhou Huang,et al. Exploiting the wavelet structure in compressed sensing MRI. , 2014, Magnetic resonance imaging.
[20] Hongwei Lu,et al. CS-MRI reconstruction based on analysis dictionary learning and manifold structure regularization , 2019, Neural Networks.
[21] Ijaz Mansoor Qureshi,et al. Improved Reconstruction of MR Scanned Images by Using a Dictionary Learning Scheme , 2019, Sensors.
[22] R. Ahmad,et al. Reducing sedation for pediatric body MRI using accelerated and abbreviated imaging protocols , 2017, Pediatric Radiology.
[23] Dominique Franson,et al. Recent advances in parallel imaging for MRI. , 2017, Progress in nuclear magnetic resonance spectroscopy.
[24] Ijaz Mansoor Qureshi,et al. Enhancing MR Image Reconstruction Using Block Dictionary Learning , 2019, IEEE Access.
[25] Eero P. Simoncelli,et al. Image quality assessment: from error visibility to structural similarity , 2004, IEEE Transactions on Image Processing.
[26] Vahid Tarokh,et al. Compressed Sensing With Wavelet Domain Dependencies for Coronary MRI: A Retrospective Study , 2011, IEEE Transactions on Medical Imaging.
[27] Xiaoliang Zhang,et al. Enhancement of the low resolution image quality using randomly sampled data for multi-slice MR imaging. , 2014, Quantitative imaging in medicine and surgery.
[28] M. Uder,et al. Diagnostic Accuracy of an MRI Protocol of the Knee Accelerated Through Parallel Imaging in Correlation to Arthroscopy Diagnostische Genauigkeit eines mittels paralleler Bildgebung beschleunigten Knie-MRT-Protokolls in Korrelation zur Arthroskopie , 2017, RöFo - Fortschritte auf dem Gebiet der Röntgenstrahlen und der bildgebenden Verfahren.
[29] Pietro Lio',et al. How Can We Make Gan Perform Better in Single Medical Image Super-Resolution? A Lesion Focused Multi-Scale Approach , 2019, 2019 IEEE 16th International Symposium on Biomedical Imaging (ISBI 2019).
[30] E. Candès,et al. Stable signal recovery from incomplete and inaccurate measurements , 2005, math/0503066.
[31] Yiming Deng,et al. Compressively Sampled MR Image Reconstruction Using Hyperbolic Tangent-Based Soft-Thresholding , 2015 .
[32] Djemel Ziou,et al. Image Quality Metrics: PSNR vs. SSIM , 2010, 2010 20th International Conference on Pattern Recognition.
[33] Lihui Wang,et al. Compressed Sensing MRI Reconstruction with Multiple Sparsity Constraints on Radial Sampling , 2019, Mathematical Problems in Engineering.
[34] Ijaz Mansoor Qureshi,et al. Respiratory Motion Correction for Compressively Sampled Free Breathing Cardiac MRI Using Smooth l1-Norm Approximation , 2018, Int. J. Biomed. Imaging.
[35] Stephen P. Boyd,et al. Enhancing Sparsity by Reweighted ℓ1 Minimization , 2007, 0711.1612.
[36] Ijaz Mansoor Qureshi,et al. Reduction of Motion Artifacts in the Recovery of Undersampled DCE MR Images Using Data Binning and L+S Decomposition , 2019, BioMed research international.
[37] T. Kurihara,et al. Compressed sensing MRI using sparsity induced from adjacent slice similarity , 2015, 2015 International Conference on Sampling Theory and Applications (SampTA).
[38] Jawad Shah,et al. Reconstruction of Sparse Signals and Compressively Sampled Images Based on Smooth l1-Norm Approximation , 2017, J. Signal Process. Syst..
[39] M. Zaitsev,et al. Motion artifacts in MRI: A complex problem with many partial solutions , 2015, Journal of magnetic resonance imaging : JMRI.
[40] Shanshan Wang,et al. A comparative study of CNN-based super-resolution methods in MRI reconstruction and its beyond , 2020, Signal Process. Image Commun..
[41] D. Donoho,et al. Sparse MRI: The application of compressed sensing for rapid MR imaging , 2007, Magnetic resonance in medicine.
[42] Martin Vetterli,et al. Compressive Sampling [From the Guest Editors] , 2008, IEEE Signal Processing Magazine.
[43] Bo Liu,et al. Sparsesense: Application of compressed sensing in parallel MRI , 2008, 2008 International Conference on Information Technology and Applications in Biomedicine.
[44] Guang Yang,et al. Lesion Focused Super-Resolution , 2018, Medical Imaging: Image Processing.
[45] H. Nyquist,et al. Certain Topics in Telegraph Transmission Theory , 1928, Transactions of the American Institute of Electrical Engineers.
[46] Ge Wang,et al. A Perspective on Deep Imaging , 2016, IEEE Access.
[47] E.J. Candes. Compressive Sampling , 2022 .
[48] Bhabesh Deka,et al. An efficient interpolated compressed sensing method for highly correlated 2D multi-slice MRI , 2016, 2016 International Conference on Accessibility to Digital World (ICADW).
[49] Bhabesh Deka,et al. Efficient interpolated compressed sensing reconstruction scheme for 3D MRI , 2018, IET Image Process..
[50] S. H. Bharathi,et al. A study of Optimum Sampling Pattern for Reconstruction of MR Images using Compressive Sensing , 2018, 2018 Second International Conference on Advances in Electronics, Computers and Communications (ICAECC).
[51] Mrinmoy Sandilya,et al. Compressed sensing trends in magnetic resonance imaging , 2017 .
[52] Bhabesh Deka,et al. Calibrationless joint compressed sensing reconstruction for rapid parallel MRI , 2020, Biomed. Signal Process. Control..
[53] B. Deka,et al. Magnetic resonance image reconstruction using fast interpolated compressed sensing , 2018 .
[54] Yong Pang,et al. Interpolated Compressed Sensing for 2D Multiple Slice Fast MR Imaging , 2013, PloS one.
[55] Nicole Seiberlich,et al. Parallel MR imaging , 2012, Journal of magnetic resonance imaging : JMRI.
[56] S. Frick,et al. Compressed Sensing , 2014, Computer Vision, A Reference Guide.
[57] T. Blumensath,et al. Theory and Applications , 2011 .
[58] Guang Yang,et al. DAGAN: Deep De-Aliasing Generative Adversarial Networks for Fast Compressed Sensing MRI Reconstruction , 2018, IEEE Transactions on Medical Imaging.