"A fast procedure for acquisition and reconstruction of magnetic resonance images using compressive sampling"
Title | "A fast procedure for acquisition and reconstruction of magnetic resonance images using compressive sampling" |
Publication Type | Conference Paper |
Year of Publication | 2015 |
Authors | H. Kiragu, G. Kamucha, E. Mwangi |
Conference Name | AFRICON 2015 |
Date Published | Sept. 2015 |
Publisher | IEEE |
ISBN Number | 978-1-4799-7498-6 |
Keywords | approximation theory, compressed sensing, compressible magnetic resonance image acquisition, compressible magnetic resonance image reconstruction, compressive sampling, compressive sampling theory, data acquisition, Haar transform coefficients, Haar transforms, Image coding, image denoising, image filtering, Image reconstruction, image sampling, incoherence, incoherent k-space data undersampling, magnetic resonance imaging, Matching pursuit algorithms, matrix algebra, median filtering, median filters, orthogonal matching pursuit, orthogonal matching Pursuit algorithm, Protons, pubcrawl170104, random matrix, recovery noise artifact suppression, restricted isometry property, Sensors, sparse magnetic resonance image reconstruction, sparse magnetic resonance image sensing, Sparse matrices, sparsity |
Abstract | This paper proposes a fast and robust procedure for sensing and reconstruction of sparse or compressible magnetic resonance images based on the compressive sampling theory. The algorithm starts with incoherent undersampling of the k-space data of the image using a random matrix. The undersampled data is sparsified using Haar transformation. The Haar transform coefficients of the k-space data are then reconstructed using the orthogonal matching Pursuit algorithm. The reconstructed coefficients are inverse transformed into k-space data and then into the image in spatial domain. Finally, a median filter is used to suppress the recovery noise artifacts. Experimental results show that the proposed procedure greatly reduces the image data acquisition time without significantly reducing the image quality. The results also show that the error in the reconstructed image is reduced by median filtering. |
URL | https://ieeexplore.ieee.org/document/7332032 |
DOI | 10.1109/AFRCON.2015.7332032 |
Citation Key | 7332032 |
- random matrix
- Matching pursuit algorithms
- matrix algebra
- median filtering
- median filters
- orthogonal matching pursuit
- orthogonal matching Pursuit algorithm
- Protons
- pubcrawl170104
- magnetic resonance imaging
- recovery noise artifact suppression
- restricted isometry property
- sensors
- sparse magnetic resonance image reconstruction
- sparse magnetic resonance image sensing
- Sparse matrices
- sparsity
- approximation theory
- incoherent k-space data undersampling
- incoherence
- image sampling
- Image reconstruction
- image filtering
- image denoising
- Image coding
- Haar transforms
- Haar transform coefficients
- data acquisition
- compressive sampling theory
- compressive sampling
- compressible magnetic resonance image reconstruction
- compressible magnetic resonance image acquisition
- compressed sensing