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On Optimal Polyline Simplification Using the Hausdorff and Fréchet Distance

机译:使用Hausdorff和Fréchet距离的最佳折线简化

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We revisit the classical polygonal line simplification problem and study it using the Hausdorff distance and Fréchet distance. Interestingly, no previous authors studied line simplification under these measures in its pure form, namely: for a given epsilon0, choose a minimum size subsequence of the vertices of the input such that the Hausdorff or Fréchet distance between the input and output polylines is at most epsilon.We analyze how the well-known Douglas-Peucker and Imai-Iri simplification algorithms perform compared to the optimum possible, also in the situation where the algorithms are given a considerably larger error threshold than epsilon. Furthermore, we show that computing an optimal simplification using the undirected Hausdorff distance is NP-hard. The same holds when using the directed Hausdorff distance from the input to the output polyline, whereas the reverse can be computed in polynomial time. Finally, to compute the optimal simplification from a polygonal line consisting of n vertices under the Fréchet distance, we give an O(kn^5) time algorithm that requires O(kn^2) space, where k is the output complexity of the simplification.
机译:我们重新审视经典的折线简化问题,并使用Hausdorff距离和Fréchet距离进行研究。有趣的是,以前没有作者研究过这些方法在其纯格式下的线简化,即:对于给定的epsilon> 0,选择输入顶点的最小子序列,使得输入和输出折线之间的Hausdorff或Fréchet距离为我们分析了著名的Douglas-Peucker和Imai-Iri简化算法与最佳算法相比的性能,在这种情况下,算法给出的误差阈值也比epsilon大得多。此外,我们表明,使用无向Hausdorff距离计算最佳简化是NP-hard。当使用从输入到输出折线的定向Hausdorff距离时,情况也是如此,而可以用多项式时间计算逆向距离。最后,要根据Fréchet距离下由n个顶点组成的折线计算最佳简化,我们给出了O(kn ^ 5)时间算法,该算法需要O(kn ^ 2)空间,其中k是简化的输出复杂度。

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