Journal article
bioRxiv, 2018
APA
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Shi, R., Jung, J.-H., & Schweser, F. (2018). Two-dimensional local Fourier image reconstruction via domain decomposition Fourier continuation method. BioRxiv.
Chicago/Turabian
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Shi, Ruonan, Jae-Hun Jung, and F. Schweser. “Two-Dimensional Local Fourier Image Reconstruction via Domain Decomposition Fourier Continuation Method.” bioRxiv (2018).
MLA
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Shi, Ruonan, et al. “Two-Dimensional Local Fourier Image Reconstruction via Domain Decomposition Fourier Continuation Method.” BioRxiv, 2018.
BibTeX Click to copy
@article{ruonan2018a,
title = {Two-dimensional local Fourier image reconstruction via domain decomposition Fourier continuation method},
year = {2018},
journal = {bioRxiv},
author = {Shi, Ruonan and Jung, Jae-Hun and Schweser, F.}
}
The MRI image is obtained in the spatial domain from the given Fourier coefficients in the frequency domain. It is costly to obtain the high resolution image because it requires higher frequency Fourier data while the lower frequency Fourier data is less costly and effective if the image is smooth. However, the Gibbs ringing, if existent, prevails with the lower frequency Fourier data. We propose an efficient and accurate local reconstruction method with the lower frequency Fourier data that yields sharp image profile near the local edge. The proposed method utilizes only the small number of image data in the local area. Thus the method is efficient. Furthermore the method is accurate because it minimizes the global effects on the reconstruction near the weak edges shown in many other global methods for which all the image data is used for the reconstruction. To utilize the Fourier method locally based on the local non-periodic data, the proposed method is based on the Fourier continuation method. This work is an extension of our previous 1D Fourier domain decomposition method to 2D Fourier data. The proposed method first divides the MRI image in the spatial domain into many subdomains and applies the Fourier continuation method for the smooth periodic extension of the subdomain of interest. Then the proposed method reconstructs the local image based on L2 minimization regularized by the L1 norm of edge sparsity to sharpen the image near edges. Our numerical results suggest that the proposed method should be utilized in dimension-by-dimension manner instead of in a global manner for both the quality of the reconstruction and computational efficiency. The numerical results show that the proposed method is effective when the local reconstruction is sought and that the solution is free of Gibbs oscillations.