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Submodular Relaxation for Inference in Markov Random Fields

机译:马尔可夫随机场中亚模松弛的推论

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摘要

In this paper we address the problem of finding the most probable state of a discrete Markov random field (MRF), also known as the MRF energy minimization problem. The task is known to be NP-hard in general and its practical importance motivates numerous approximate algorithms. We propose a submodular relaxation approach (SMR) based on a Lagrangian relaxation of the initial problem. Unlike the dual decomposition approach of Komodakis et al. SMR does not decompose the graph structure of the initial problem but constructs a submodular energy that is minimized within the Lagrangian relaxation. Our approach is applicable to both pairwise and high-order MRFs and allows to take into account global potentials of certain types. We study theoretical properties of the proposed approach and evaluate it experimentally.
机译:在本文中,我们解决了寻找离散马尔可夫随机场(MRF)的最可能状态的问题,也称为MRF能量最小化问题。一般来讲,已知该任务是NP难的,其实际重要性激发了许多近似算法。我们提出了基于初始问题的拉格朗日松弛的亚模松弛方法(SMR)。与Komodakis等人的双重分解方法不同。 SMR不会分解初始问题的图结构,但会构造在拉格朗日弛豫范围内最小化的亚模能量。我们的方法适用于成对和高阶MRF,并允许考虑某些类型的全球潜力。我们研究了该方法的理论特性,并进行了实验评估。

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