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Optimal labeling of point features in rectangular labeling models

机译:矩形标注模型中点要素的最佳标注

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We investigate the NP-hard label number maximization problem (LNM): Given a set of rectangular labels A, each of which belongs to a point feature in the plane, the task is to find a labeling for a largest subset A p of A. A labeling is a placement such that none of the labels overlap and each; c A p is placed according to a labeling model: In the discrete models, the label must be placed so that the labeled point coincides with an element of a predefined subset of corners of the rectangular label, in the continuous or slider models, the point must lie on a subset of boundaries of the label. Obviously, the slider models allow a continuous movement of a label around its point feature, leading to a significantly higher number of labels that can be placed. We present exact algorithms for this problem that are based on a pair of so-called constraint graphs that code horizontal and vertical positioning relations. The key idea is to link the two graphs by a set of additional constraints, thus characterizing all feasible solutions of LNM. This enables us to formulate a zero-one integer linear program whose solution leads to an optimal labeling. We can express LNM in both the discrete and the slider labeling models. To our knowledge, we present the first algorithm that computes provably optimal solutions in the slider models. We find it remarkable that our approach is independent of the labeling model and results in a discrete algorithm even if the problem is of continuous nature as in the slider models. Extensive experimental results on both real-world instances and point sets created by a widely used benchmark generator show that the new approach - although being an exponential time algorithm - is applicable in practice. [References: 26]
机译:我们研究NP硬标签数最大化问题(LNM):给定一组矩形标签A,每个矩形标签都属于平面中的一个点特征,任务是找到A的最大子集A p的标签。标签是这样的放置位置:所有标签都不重叠,每个标签都重叠。 c A p根据标签模型放置:在离散模型中,必须放置标签,以使标记点与矩形标签的预定义角子集的元素重合,在连续模型或滑块模型中,该点必须位于标签边界的子集上。显然,滑块模型允许标签围绕其点特征连续移动,从而导致可以放置的标签数量大大增加。我们提出了基于一对所谓的约束图的精确算法,这些约束图对水平和垂直位置关系进行编码。关键思想是通过一组附加约束将两个图链接起来,从而表征LNM的所有可行解。这使我们能够制定一个零一整数线性程序,其解决方案可以导致最佳标记。我们可以在离散和滑块标签模型中表示LNM。据我们所知,我们提出了第一种算法,该算法在滑模模型中计算可证明的最优解。我们发现,值得注意的是,我们的方法与标签模型无关,并且即使该问题像滑块模型一样具有连续性,也会导致算法离散。由广泛使用的基准生成器在现实世界实例和点集上进行的大量实验结果表明,这种新方法尽管是指数时间算法,但在实践中是适用的。 [参考:26]

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