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A Road Map Refinement Method Using Delaunay Triangulation for Big Trace Data

机译:基于Delaunay三角剖分的大轨迹数据路线图优化方法

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摘要

With the rapid development of urban transportation, people urgently need high-precision and up-to-date road maps. At the same time, people themselves are an important source of road information for detailed map construction, as they can detect real-world road surfaces with GPS devices in the course of their everyday life. Big trace data makes it possible and provides a great opportunity to extract and refine road maps at relatively low cost. In this paper, a new refinement method is proposed for incremental road map construction using big trace data, employing Delaunay triangulation for higher accuracy during the GPS trace stream fusion process. An experiment and evaluation were carried out on the GPS traces collected by taxis in Wuhan, China. The results show that the proposed method is practical and improves upon existing incremental methods in terms of accuracy.
机译:随着城市交通的迅猛发展,人们迫切需要高精度和最新的路线图。同时,人本身就是进行详细地图构建的重要道路信息来源,因为他们可以在日常生活中使用GPS设备检测现实世界的路面。大的跟踪数据使其成为可能,并为以较低的成本提取和完善路线图提供了巨大的机会。本文提出了一种新的细化方法,该方法用于大轨迹数据的增量道路地图构建,并在GPS轨迹流融合过程中采用Delaunay三角剖分技术来提高精度。对中国武汉的出租车所收集的GPS轨迹进行了实验和评估。结果表明,该方法是实用的,并且在精度上对现有的增量方法进行了改进。

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