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Generalized Flows for Optimal Inference in Higher Order MRF-MAP

机译:高阶MRF-MAP中最优推理的广义流

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摘要

Use of higher order clique potentials in MRF-MAP problems has been limited primarily because of the inefficiencies of the existing algorithmic schemes. We propose a new combinatorial algorithm for computing optimal solutions to label MRF-MAP problems with higher order clique potentials. The algorithm runs in time in the worst case ( is size of clique and is the number of pixels). A special gadget is introduced to model flows in a higher order clique and a technique for building a flow graph is specified. Based on the primal dual structure of the optimization problem, the notions of the capacity of an edge and a cut are generalized to define a flow problem. We show that in this flow graph, when the clique potentials are submodular, the max flow is equal to the min cut, which also is the optimal solution to the problem. We show experimentally that our algorithm provides significantly better solutions in practice and is hundreds of times faster than solution schemes like Dual Decomposition , TRWS and Reduction , , . The framework represents a - ignificant advance in handling higher order problems making optimal inference practical for medium sized cliques.
机译:主要由于现有算法方案的低效率,限制了在MRF-MAP问题中使用更高阶的集团势能。我们提出了一种新的组合算法,用于计算最佳解决方案,以标记具有较高阶团势的MRF-MAP问题。该算法在最坏的情况下及时运行(是集团的大小,是像素数)。引入了一个特殊的小工具来对高阶团中的流进行建模,并指定了一种构建流程图的技术。基于最优化问题的原始对偶结构,可以概括边缘和切口的能力的概念,以定义流动问题。我们显示出在此流程图中,当团势为亚模时,最大流量等于最小割,这也是该问题的最佳解决方案。我们通过实验证明,我们的算法在实践中提供了明显更好的解决方案,比对偶分解,TRWS和归约,。该框架在处理高阶问题方面取得了举足轻重的进步,使中型集团的最佳推理变得可行。

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