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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Dynamic Graph Cuts for Efficient Inference in Markov Random Fields
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Dynamic Graph Cuts for Efficient Inference in Markov Random Fields

机译:马尔可夫随机场中有效推论的动态图割

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Abstractu00026;#8212;In this paper we present a fast new fully dynamic algorithm for the st-mincut/max-flow problem. We show how this algorithm can be used to efficiently compute MAP solutions for certain dynamically changing MRF models in computer vision such as image segmentation. Specifically, given the solution of the max-flow problem on a graph, the dynamic algorithm efficiently computes the maximum flow in a modified version of the graph. The time taken by it is roughly proportional to the total amount of change in the edge weights of the graph. Our experiments show that, when the number of changes in the graph is small, the dynamic algorithm is significantly faster than the best known static graph cut algorithm. We test the performance of our algorithm on one particular problem: the object-background segmentation problem for video. It should be noted that the application of our algorithm is not limited to the above problem, the algorithm is generic and can be used to yield similar improvements in many other cases that involve dynamic change.
机译:Abstractu00026;#8212;本文提出了一种针对st-mincut / max-flow问题的快速新型全动态算法。我们将展示该算法如何用于在计算机视觉(例如图像分割)中为某些动态变化的MRF模型有效地计算MAP解决方案。具体来说,给定图上最大流量问题的解决方案,动态算法可以有效地计算图的修改版本中的最大流量。它花费的时间大致与图形的边缘权重变化的总量成比例。我们的实验表明,当图形中的变化次数较小时,动态算法明显比最著名的静态图形切割算法快。我们在一个特定问题上测试了算法的性能:视频的对象背景分割问题。应该注意的是,我们算法的应用不限于上述问题,该算法是通用的,可以在涉及动态变化的许多其他情况下用于产生类似的改进。

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