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GRMA: Generalized Range Move Algorithms for the Efficient Optimization of MRFs

机译:GRA:广义范围移动算法,用于高效优化MRFS

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摘要

Markov random fields (MRF) have become an important tool for many vision applications, and the optimization of MRFs is a problem of fundamental importance. Recently, Veksler and Kumar et al. proposed the range move algorithms, which are some of the most successful optimizers. Instead of considering only two labels as in previous move-making algorithms, they explore a large search space over a range of labels in each iteration, and significantly outperform previous move-making algorithms. However, two problems have greatly limited the applicability of range move algorithms: (1) They are limited in the energy functions they can handle (i.e., only truncated convex functions); (2) They tend to be very slow compared to other move-making algorithms (e.g., -expansion and -swap). In this paper, we propose two generalized range move algorithms (GRMA) for the efficient optimization of MRFs. To address the first problem, we extend the GRMAs to more general energy functions by restricting the chosen labels in each move so that the energy function is submodular on the chosen subset. Furthermore, we provide a feasible sufficient condition for choosing these subsets of labels. To address the second problem, we dynamically obtain the iterative moves by solving set cover problems. This greatly reduces the number of moves during the optimization. We also propose a fast graph construction method for the GRMAs. Experiments show that the GRMAs offer a great speedup over previous range move algorithms, while yielding competitive solutions.
机译:马尔可夫随机字段(MRF)已成为许多视觉应用的重要工具,MRF的优化是重要的问题。最近,Veksler和Kumar等人。提出了范围移动算法,这些算法是一些最成功的优化器。而不是在以前的移动算法中只考虑两个标签,而是在每次迭代中的一系列标签上探索大型搜索空间,并显着优于先前的移动算法。然而,两个问题极大地限制了范围移动算法的适用性:(1)它们的能量功能受到限制,它们可以处理(即,仅截断的凸函数); (2)与其他移动算法相比,它们往往非常缓慢(例如,-expansion和-swap)。在本文中,我们提出了两个广义范围移动算法(GRMA),以实现MRF的有效优化。为了解决第一个问题,我们通过限制每个移动中的所选标签将GRAMA扩展到更一般的能量功能,以便在所选子集上是子模块的能量函数。此外,我们提供了选择这些标签子集的可行充分条件。为了解决第二个问题,我们通过解决集合问题动态获得迭代动作。这极大地减少了在优化期间的移动次数。我们还提出了一种快速的GRAMS施工方法。实验表明,GRAMS提供了在先前的范围移动算法上的大量加速,同时产生了竞争的解决方案。

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