A Deterministic Algorithm for Reconstructing Images with Interacting Discontinuities

Bedini L., Gerace I., Tonazzini A.
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引用次数: 47

Abstract

The most common approach for incorporating discontinuities in visual reconstruction problems makes use of Bayesian techniques, based on Markov random field models, coupled with stochastic relaxation and simulated annealing. Despite their convergence properties and flexibility in exploiting a priori knowledge on physical and geometric features of discontinuities, stochastic relaxation algorithms often present insurmountable computational complexity. Recently, considerable attention has been given to suboptimal deterministic algorithms, which can provide solutions with much lower computational costs. These algorithms consider the discontinuities implicitly rather than explicitly and have been mostly derived when there are no interactions between two or more discontinuities in the image model. In this paper we propose an algorithm that allows for interacting discontinuities, in order to exploit the constraint that discontinuities must be connected and thin. The algorithm, called E-GNC, can be considered an extension of the graduated nonconvexity (GNC), first proposed by Blake and Zisserman for noninteracting discontinuities. When applied to the problem of image reconstruction from sparse and noisy data, the method is shown to give satisfactory results with a low number of iterations.

具有相互作用不连续点的图像重建的确定性算法
在视觉重建问题中结合不连续的最常见方法是使用基于马尔可夫随机场模型的贝叶斯技术,结合随机松弛和模拟退火。尽管随机松弛算法在利用不连续的物理和几何特征的先验知识方面具有收敛性和灵活性,但它通常具有难以克服的计算复杂性。近年来,亚最优确定性算法得到了广泛的关注,它可以提供更低的计算成本的解决方案。这些算法隐式地而不是显式地考虑不连续,并且主要是在图像模型中两个或多个不连续之间没有相互作用的情况下导出的。在本文中,我们提出了一种允许相互作用的不连续点的算法,以利用不连续点必须连接且薄的约束。该算法被称为E-GNC,可以被认为是渐进式非凸性(GNC)的扩展,GNC首先由Blake和Zisserman提出,用于非相互作用不连续。将该方法应用于基于稀疏和噪声数据的图像重建问题,结果表明,该方法迭代次数少,结果令人满意。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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