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MRF#146;s forMRI#146;s: Bayesian Reconstruction of MR Images via Graph Cuts

机译:MRF的Formri's:通过图表切割MR图像的贝叶斯重建

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Markov Random Fields (MRF’s) are an effective way to impose spatial smoothness in computer vision. We describe an application of MRF’s to a non-traditional but important problem in medical imaging: the reconstruction of MR images from raw fourier data. This can be formulated as a linear inverse problem, where the goal is to find a spatially smooth solution while permitting discontinuities. Although it is easy to apply MRF’s to the MR reconstruction problem, the resulting energy minimization problem poses some interesting challenges. It lies outside of the class of energy functions that can be straightforwardlyminimized with graph cuts. We show how graph cuts can nonetheless be adapted to solve this problem, and provide some theoretical analysis of the properties of our algorithm. Experimentally, our method gives very strong performance, with a substantial improvement in SNR when compared with widely-used methods for MR reconstruction.
机译:马尔可夫随机字段(MRF的)是一种有效的方法,可以在计算机视觉中施加空间平滑度。我们描述了MRF对医学成像的非传统但重要问题的应用:从原始傅里叶数据重建MR图像。这可以制定为线性逆问题,其中目标是在允许不连续性的同时找到空间平滑的解决方案。虽然很容易将MRF应用于MR重建问题,但由此产生的能量最小化问题造成一些有趣的挑战。它位于能够用图形切割直接敏感的能量功能之外。我们展示了Graph Cuts如何仍然可以调整解决这个问题,并提供了对算法的性质的一些理论分析。通过实验,我们的方法具有非常强烈的性能,与MR重建的广泛使用方法相比,SNR的显着提高。

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