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Vehicle Trajectory Clustering and Anomaly Detection at Freeway Off-Ramp Based on Driving Behavior Similarity

机译:基于驾驶行为相似性的高速公路越野的车辆轨迹聚类和异常检测

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Freeway off-ramp safety has attracted much attention. To study motion patterns of vehicles at freeway off-ramps, a trajectory clustering method based on similarity of driving behavior features was proposed. Traffic video data was collected by an unmanned aerial vehicle and 472 vehicle driving trajectories composed of spatial position, longitudinal speed, lateral speed, speed, longitudinal acceleration, and lateral acceleration, were extracted. DTW was used to build a similarity model to measure the similarity between vehicle trajectories and a trajectory clustering method was proposed based on DBSCAN clustering algorithm. Based on trajectory clustering results, different motion patterns including regular motion patterns of driving in one lane and changing lane to adjacent lane, improper lane changing motion patterns of vehicle crossing at least one lane and illegal motion pattern of overtaking at off-ramp, are extracted. Representative trajectory of each clusters can be used to detect different trajectories and determine new abnormal trajectories.
机译:高速公路越斜坡安全引起了很多关注。为了研究高速公路越斜坡的车辆运动模式,提出了一种基于驾驶行为特征的相似性的轨迹聚类方法。通过无人驾驶飞行器和472辆车辆行驶轨迹收集的交通视频数据提取,由空间位置,纵向速度,横向速度,速度,纵向加速和横向加速组成。 DTW用于构建相似性模型,以测量车辆轨迹之间的相似性,并且基于DBSCAN聚类算法提出了一种轨迹群集方法。基于轨迹聚类结果,包括不同运动模式,包括在一个车道中驱动的常规运动模式,并改变通道的相邻车道,车辆交叉的车辆的不正确的车道变化运动模式和在越斜坡上超车的非法运动模式。 。每个簇的代表轨迹可用于检测不同的轨迹并确定新的异常轨迹。

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