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Walking the Dog Fast in Practice: Algorithm Engineering of the Frechet Distance

机译:在实践中快速行走狗:Frechet距离的算法工程

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The Frechet distance provides a natural and intuitive measure for the popular task of computing the similarity of two (polygonal) curves. While a simple algorithm computes it in near-quadratic time, a strongly subquadratic algorithm cannot exist unless the Strong Exponential Time Hypothesis fails. Still, fast practical implementations of the Frechet distance, in particular for realistic input curves, are highly desirable. This has even lead to a designated competition, the ACM SIGSPATIAL GIS Cup 2017: Here, the challenge was to implement a near-neighbor data structure under the Frechet distance. The bottleneck of the top three implementations turned out to be precisely the decision procedure for the Frechet distance. In this work, we present a fast, certifying implementation for deciding the Frechet distance, in order to (1) complement its pessimistic worst-case hardness by an empirical analysis on realistic input data and to (2) improve the state of the art for the GIS Cup challenge. We experimentally evaluate our implementation on a large benchmark consisting of several data sets (including handwritten characters and GPS trajectories). Compared to the winning implementation of the GIS Cup, we obtain running time improvements of up to more than two orders of magnitude for the decision procedure and of up to a factor of 30 for queries to the near-neighbor data structure.
机译:Frechet距离为计算两个(多边形)曲线的相似性提供了自然和直观的措施。虽然一个简单的算法在近二次时间内计算它,但除非强的指数时间假设失败,否则不能存在强烈的子种化算法。仍然,非常希望的Frechet距离的快速实际实施,特别是用于现实输入曲线。这甚至导致了指定的竞争,ACM SigSpatial GIS杯2017年:这里,挑战是在Frechet距离下实现近邻的数据结构。前三种实施的瓶颈证明是Frechet距离的决策程序。在这项工作中,我们展示了一个快速的认证实现,用于决定Freechet距离,以(1)通过实际输入数据的实证分析来补充其悲观最坏情况的硬度,并提高了最新的艺术状态GIS杯挑战。我们通过几个数据集(包括手写字符和GPS轨迹)在大型基准测试中进行实验评估我们的实现。与GIS杯的获奖实施相比,我们获得了近邻数据结构的查询的多达两个数量级的运行时间改进,最多30倍。

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