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首页> 外文期刊>Journal of applied mathematics >A Smoothed l0-Norm and l1-Norm Regularization Algorithm for Computed Tomography
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A Smoothed l0-Norm and l1-Norm Regularization Algorithm for Computed Tomography

机译:用于计算断层扫描的平滑L0-NOM和L1-Norm正则化算法

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The nonmonotone alternating direction algorithm (NADA) was recently proposed for effectively solving a class of equality-constrained nonsmooth optimization problems and applied to the total variation minimization in image reconstruction, but the reconstructed images suffer from the artifacts. Though by the l0-norm regularization the edge can be effectively retained, the problem is NP hard. The smoothed l0-norm approximates the l0-norm as a limit of smooth convex functions and provides a smooth measure of sparsity in applications. The smoothed l0-norm regularization has been an attractive research topic in sparse image and signal recovery. In this paper, we present a combined smoothed l0-norm and l1-norm regularization algorithm using the NADA for image reconstruction in computed tomography. We resolve the computation challenge resulting from the smoothed l0-norm minimization. The numerical experiments demonstrate that the proposed algorithm improves the quality of the reconstructed images with the same cost of CPU time and reduces the computation time significantly while maintaining the same image quality compared with the l1-norm regularization in absence of the smoothed l0-norm.
机译:最近提出了非调和交替方向算法(NADA),以有效地解决了一类相等受约束的非光滑优化问题,并应用于图像重建中的总变化最小化,但是重建的图像遭受伪像。虽然通过L0-Norm正规化可以有效地保留边缘,但问题是NP硬。平滑的L0-NAR近似于L0-NOM作为平滑凸起功能的限制,并在应用中提供平滑的稀疏度量。平滑的L0-Norm正规化是稀疏图像和信号恢复的有吸引力的研究主题。在本文中,我们使用NADA提供了一种组合平滑的L0-NARM和L1-NOM正规化算法,用于计算机断层扫描中的图像重建。我们解决了由平滑的L0-NOM最小化导致的计算挑战。数值实验表明,所提出的算法提高了具有相同CPU时间成本的重建图像的质量,并显着降低了与在不存在平滑的L0-NOR的L1-Norm正规相同的图像质量的同时显着降低计算时间。

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