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Label Number Maximization in the Slider Model

机译:滑块模型中的标签编号最大化

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摘要

We consider the NP-hard label number maximization problem LNM: Given a set of rectangular labels, each of which belongs to a point feature in the plane, the task is to find a labeling for a largest subset of the labels. A labeling is a placement such that none of the labels overlap and each is placed so that its boundary touches the corresponding point feature. The purpose of this paper is twofold: We present a new force-based simulated annealing algorithm to heuristically solve the problem and we provide the results of a very thorough experimental comparison of the best known labeling methods on widely used benchmark sets. The design of our new method has been guided by the goal to produce labelings that are similar to the results of an experienced human performing the same task. So we are not only looking for a labeling where the number of labels placed is high but also where the distribution of the placed labels is good. Our experimental results show that the new algorithm outperforms the other methods in terms of quality while still being reasonably fast and confirm that the simulated annealing method is well-suited for map labeling problems.
机译:我们考虑NP硬标签数最大化问题LNM:给定一组矩形标签,每个矩形标签都属于平面中的点特征,任务是为标签的最大子集找到标签。标注是这样的放置,使得所有标注均不重叠,并且每个标注均被放置为使其边界接触相应的点要素。本文的目的是双重的:我们提出了一种新的基于力的模拟退火算法来启发式地解决该问题,并且我们提供了对广泛使用的基准集上最著名的标记方法进行非常彻底的实验比较的结果。我们新方法的设计一直以目标为指导,以产生与经验丰富的人员执行相同任务的结果相似的标签。因此,我们不仅要在放置大量标签的地方寻找标签,而且还要寻找放置良好的标签分布的地方。我们的实验结果表明,新算法在质量上优于其他方法,同时仍然相当快,并且证明了模拟退火方法非常适合地图标注问题。

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