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Convex MR brain image reconstruction via non-convex total variation minimization

机译:通过非凸总变化最小化的凸MR脑图像重建

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摘要

Total variation (TV) regularization is a technique commonly utilized to promote sparsity of image in gradient domain. In this article, we address the problem of MR brain image reconstruction from highly undersampled Fourier measurements. We define the Moreau enhanced function of L1 norm, and introduce the minmax-concave TV (MCTV) penalty as a regularization term for MR brain image reconstruction. MCTV strongly induces the sparsity in gradient domain, and fits the frame of fast algorithms (eg, ADMM) for solving optimization problems. Although MCTV is non-convex, the cost function in each iteration step can maintain convexity by specifying the relative nonconvexity parameter properly. Experimental results demonstrate the superior performance of the proposed method in comparison with standard TV as well as non-local TV minimization method, which suggests that MCTV may have promising applications in the field of neuroscience in the future.
机译:总变异(TV)正则化是一种通常用于提升梯度域中图像稀疏性的技术。在本文中,我们从高度欠采样的傅立叶测量中解决了MR脑图像重建的问题。我们定义L1范本的Moreau增强功能,并引入最小凹面电视(MCTV)罚分作为MR脑图像重建的正则化项。 MCTV强烈地引起了梯度域的稀疏性,并且适合用于解决优化问题的快速算法(例如ADMM)的框架。尽管MCTV是非凸的,但每个迭代步骤中的成本函数可以通过正确指定相对非凸性参数来保持凸性。实验结果表明,与标准电视以及非本地电视最小化方法相比,该方法具有更好的性能,这表明MCTV在未来的神经科学领域可能具有广阔的应用前景。

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