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Two-dimensional local Fourier image reconstruction via domain decomposition Fourier continuation method

机译:区域分解傅里叶连续法重建二维局部傅里叶图像

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摘要

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.
机译:从频域中的给定傅立叶系数在空间域中获取MRI图像。获得高分辨率图像是昂贵的,因为它需要较高频率的傅立叶数据,而较低的频率的傅立叶数据如果图像平滑则成本较低且有效。但是,如果存在吉布斯振铃,则低频傅里叶数据占主导。我们提出了一种高效且准确的局部重构方法,该方法具有较低频率的傅立叶数据,可在局部边缘附近产生清晰的图像轮廓。所提出的方法仅利用局部区域中的少量图像数据。因此,该方法是有效的。此外,该方法是准确的,因为它使所有其他图像方法都用于重建的许多其他全局方法中所示的弱边缘附近的重建对全局影响最小。为了基于局部非周期性数据在本地利用傅立叶方法,提出的方法基于傅立叶连续法。这项工作是我们先前的1D Fourier域分解方法到2D Fourier数据的扩展。所提出的方法首先将空间域中的MRI图像划分为许多子域,并将傅里叶连续法应用于感兴趣子域的平滑周期扩展。然后,该方法基于由边缘稀疏性的L1范数规范化的L2最小化来重建局部图像,以使图像在边缘附近变清晰。我们的数值结果表明,所提出的方法应以逐维的方式使用,而不是以全局的方式使用,以提高重建质量和计算效率。数值结果表明,所提出的方法在寻求局部重构时是有效的,并且解没有吉布斯振荡。

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