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首页> 外文期刊>International Journal of Distributed Sensor Networks >Trajectory-Based Road-Geometry and Crash-Risk Estimation with Smartphone-Assisted Sensor Networks
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Trajectory-Based Road-Geometry and Crash-Risk Estimation with Smartphone-Assisted Sensor Networks

机译:智能手机辅助传感器网络的基于轨迹的道路几何和碰撞风险估计

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摘要

As mobile devices came into wide use, it became practical to collect travel data in personal logs. Many studies have been conducted to extract meaningful information from this trend. In this study, we present a system for monitoring road-geometry and crash-risk estimation, based on trajectories created using a smartphone-aided sensor network. The proposed system consists of a number of node vehicles with smartphone applications for GPS data collection and a map server which aggregates the collected GPS trajectories and estimates road conditions. In order to estimate road geometry and crash risk information, the trajectories were segmented and categorized into groups according to their headings. Based on the processed trajectories, the geometry of the road section was estimated using the principal curve method. The crash risk of the road section was estimated from the constructed road geometry and the density map of the trajectories. Our system was evaluated using bicycle trajectories collected from segregated bicycle tracks in Seoul, Korea. Constructed geometry and crash-risk information of the track was compared with real track geometry and crash data. As a result, the estimated road geometry showed over 74% similarity and the calculated crash risk (61%) matched the real crash data.
机译:随着移动设备的广泛使用,在个人日志中收集旅行数据变得切实可行。为了从这种趋势中提取有意义的信息,已经进行了许多研究。在这项研究中,我们基于使用智能手机辅助的传感器网络创建的轨迹,提出了一种用于监控道路几何形状和碰撞风险估计的系统。拟议的系统由多个节点车辆组成,这些节点车辆具有用于GPS数据收集的智能手机应用程序和地图服务器,该服务器汇总收集的GPS轨迹并估算道路状况。为了估计道路的几何形状和碰撞风险信息,将轨迹进行了细分,并根据其标题将其分类。根据处理后的轨迹,使用主曲线法估算路段的几何形状。根据构造的道路几何形状和轨迹的密度图估算路段的崩溃风险。我们使用从韩国首尔的隔离自行车道收集的自行车轨迹评估了我们的系统。将轨道的构造几何形状和碰撞风险信息与实际轨道几何形状和碰撞数据进行比较。结果,估计的道路几何形状显示出超过74%的相似度,计算出的碰撞风险(61%)与实际碰撞数据相匹配。

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