首页> 外文期刊>Inverse Problems: An International Journal of Inverse Problems, Inverse Methods and Computerised Inversion of Data >String-averaging incremental subgradients for constrained convex optimization with applications to reconstruction of tomographic images
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String-averaging incremental subgradients for constrained convex optimization with applications to reconstruction of tomographic images

机译:用于约束凸优化的字符串平均增量子梯度,适用于层析图像重建

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摘要

We present a method for non-smooth convex minimization which is based on subgradient directions and string-averaging techniques. In this approach, the set of available data is split into sequences (strings) and a given iterate is processed independently along each string, possibly in parallel, by an incremental subgradient method. (ISM). The end-points of all strings are averaged to form the next iterate. The method is useful to solve sparse and large-scale non-smooth convex optimization problems, such as those arising in tomographic imaging. A convergence analysis is provided under realistic, standard conditions. Numerical tests are performed in a tomographic image reconstruction application, showing good performance for the convergence speed when measured as the decrease ratio of the objective function, in comparison to classical ISM.
机译:我们提出了一种基于次梯度方向和字符串平均技术的非平滑凸最小化方法。在这种方法中,可用数据集被分成序列(字符串),并通过增量次梯度方法沿着每个字符串(可能并行)独立处理给定的迭代。 (主义)。将所有字符串的端点取平均值,以形成下一个迭代。该方法可用于解决稀疏和大规模的非光滑凸优化问题,例如层析成像中出现的问题。在现实的标准条件下提供了收敛分析。在层析图像重建应用程序中进行了数值测试,与传统的ISM相比,当以目标函数的减少率衡量时,显示出收敛速度的良好性能。

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