Application of the KNN algorithm based on KD tree in intelligent transportation system

Guangyi Zhang, Fangzhen Li
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引用次数: 8

Abstract

The intelligent transportation system has demonstrated its strong advantages in solving the urban transport problem. One of its important roles is able to reflect the traffic conditions timely through the floating car. The key problem is to find out the candidate road sections from the vast road network quickly. Then we make the floating car match to the corresponding road by the map-matching algorithm. So we can get the real location of the floating car on the map. Every floating car needs to select candidate road sections from the whole road network, so the computing time is an important factor in affecting the real-time performance of the whole system. The commonly used method is to build an ellipse according to the probability criterion. It needs to determine the size of the ellipse, which is based on the statistic theory. It also needs to find these road sections which are in the ellipse from the whole road network. The whole process is complicated and time-consuming. Therefore, this paper proposes the k-nearest neighbors algorithm based on KD tree to get the candidate road sections.
基于KD树的KNN算法在智能交通系统中的应用
智能交通系统在解决城市交通问题方面已显示出强大的优势。它的一个重要作用是能够通过浮车及时反映交通状况。关键问题是从庞大的路网中快速找到候选路段。然后通过地图匹配算法将浮车与相应的道路进行匹配。这样我们就能在地图上找到浮车的真实位置。每辆浮动车都需要从整个路网中选择候选路段,因此计算时间是影响整个系统实时性的重要因素。常用的方法是根据概率准则构造椭圆。它需要确定椭圆的大小,这是基于统计理论。它还需要从整个路网中找出这些在椭圆内的路段。整个过程既复杂又耗时。为此,本文提出了基于KD树的k近邻算法来获取候选路段。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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