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Exact optimization for Markov random fields with convex priors

机译:具有凸先验的马尔可夫随机场的精确优化

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摘要

We introduce a method to solve exactly a first order Markov random field optimization problem in more generality than was previously possible. The MRF has a prior term that is convex in terms of a linearly ordered label set. The method maps the problem into a minimum-cut problem for a directed graph, for which a globally optimal solution can be found in polynomial time. The convexity of the prior function in the energy is shown to be necessary and sufficient for the applicability of the method.
机译:我们介绍了一种比以前更通用的方法来精确解决一阶Markov随机场优化问题。 MRF的先验项在线性排序的标签集方面是凸的。该方法将问题映射到有向图的最小割问题,可以在多项式时间内找到全局最优解。能量中先验函数的凸度对于该方法的适用性是必需的和充分的。

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