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Joint Graph Decomposition Node Labeling: Problem, Algorithms, Applications

机译:联合图分解和节点标记:问题,算法,应用

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We state a combinatorial optimization problem whose feasible solutions define both a decomposition and a node labeling of a given graph. This problem offers a common mathematical abstraction of seemingly unrelated computer vision tasks, including instance-separating semantic segmentation, articulated human body pose estimation and multiple object tracking. Conceptually, it generalizes the unconstrained integer quadratic program and the minimum cost lifted multicut problem, both of which are NP-hard. In order to find feasible solutions efficiently, we define two local search algorithms that converge monotonously to a local optimum, offering a feasible solution at any time. To demonstrate the effectiveness of these algorithms in tackling computer vision tasks, we apply them to instances of the problem that we construct from published data, using published algorithms. We report state-of-the-art application-specific accuracy in the three above-mentioned applications.
机译:我们提出了一个组合优化问题,其可行解定义了给定图的分解和节点标记。这个问题为看似无关的计算机视觉任务提供了通用的数学抽象,包括实例分离的语义分割,关节式人体姿势估计和多对象跟踪。从概念上讲,它推广了无约束整数二次规划和最小费用提升多切问题,这两者都是NP难的。为了有效地找到可行的解决方案,我们定义了两个局部搜索算法,这些算法单调收敛到局部最优值,可随时提供可行的解决方案。为了证明这些算法在解决计算机视觉任务中的有效性,我们将它们应用于使用已发布的算法从已发布的数据构造的问题实例中。我们在上述三个应用程序中报告了最新的特定于应用程序的准确性。

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