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Detecting Deviations from Intended Routes Using Vehicular GPS Tracks

机译:使用车载GPS轨迹检测与预期路线的偏差

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摘要

This article proposes a method to find intersections at which cars tend to deviate from the optimal route based on global positioning system (GPS) tracking data under the assumption that such deviations indicate that car navigation systems (CNSs) and road signage are not readily available. If the intended route is known, deviations can be enumerated by comparing the intended route with the vehicle's actual route as observed by a GPS; however, the intended route is unknown and can differ from the route suggested by a CNS. To identify intersections with high deviation rates without knowing intended routes, we exhaustively sampled subsequences from each vehicular GPS track, and detected deviations from the optimal route for the subsequences. Although the detected deviations are not always caused by driver confusion, accumulating such erroneous detection results would yield a meaningful difference in the number of accumulated deviations at each intersection. We applied the proposed method to 3,843 GPS tracks collected from visitor drivers in the city of Kyoto. Thresholding the estimated deviation rate yielded 39 intersections from 14,543 candidates. The results show a certain level of correlation between obtained deviations and rerouting locations from actual CNS data. We also found several intersections where faulty route suggestions are provided by CNSs.
机译:本文提出了一种方法,该方法基于全球定位系统(GPS)跟踪数据,在这种偏离表明汽车导航系统(CNS)和道路指示牌不易获得的情况下,找出汽车倾向于偏离最佳路线的路口。如果预期路线已知,则可以通过将预期路线与GPS观测到的车辆实际路线进行比较来枚举偏差。但是,目标路由未知,并且可能与CNS建议的路由不同。为了在不知道预期路线的情况下识别出偏差率较高的路口,我们从每个车辆GPS轨道中详尽采样了子序列,并检测了与子序列最佳路线的偏差。尽管检测到的偏差并不总是由驾驶员的困惑引起,但是累积这种错误的检测结果将在每个路口处产生累积偏差数的有意义的差异。我们将建议的方法应用于从京都市的访客驾驶员那里收集的3,843个GPS轨道。阈值估计偏差率产生了来自14,543个候选者的39个交集。结果表明,从实际的CNS数据获得的偏差与重路由位置之间存在一定程度的相关性。我们还发现了几个交叉路口,中枢神经系统提供了错误的路线建议。

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