Investigation of parallel and globally convergent iterative schemes for nonlinear variational image smoothing and segmentation

J. Heers, C. Schnörr, H. Stiehl
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引用次数: 5

Abstract

We consider a nonquadratic convex variational segmentation approach and investigate numerical schemes to allow for an efficient computation of the global minimum on a parallel architecture. We focus on iterative schemes for which we can show global convergence to the unique solution irrespective of the starting point. In the context of (semi-)automated image processing tasks, such a feature is of utmost importance. We characterize various approaches that have been proposed in the literature as special cases of a general iterative scheme. Among these approaches are the linearization technique introduced by Geman and Reynolds (1992) and the half-quadratic regularization scheme proposed by Geman and Yang (see IEEE Trans. Image Proc., no.4, p.932-45, 1995). As a result, we can show global convergence to the unique solution under weaker conditions. Efficient Krylov subspace solvers for the resulting linear systems have been implemented on a parallel architecture to assess the performance of these numerical schemes. Experimental results concerning convergence rates and speed-up are reported. Due to the similarity of the segmentation approach considered here with total variation based image restoration methods, our results are relevant for this latter class of methods as well.
非线性变分图像平滑与分割的并行与全局收敛迭代方法研究
我们考虑了一种非二次凸变分分割方法,并研究了允许在并行架构上有效计算全局最小值的数值格式。我们关注的迭代方案,我们可以显示全局收敛到唯一解,而不考虑起点。在(半)自动化图像处理任务的背景下,这样的特征是至关重要的。我们将文献中提出的各种方法描述为一般迭代方案的特殊情况。这些方法包括由Geman和Reynolds(1992)引入的线性化技术和由Geman和Yang提出的半二次正则化方案(参见IEEE Trans。图像处理,不。4,第932-45页,1995)。结果表明,在较弱的条件下,我们可以得到全局收敛的唯一解。在并行架构上对所得到的线性系统进行了高效的Krylov子空间求解,以评估这些数值格式的性能。给出了收敛速率和加速的实验结果。由于这里考虑的分割方法与基于全变分的图像恢复方法的相似性,我们的结果也适用于后一类方法。
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