自然驾驶风格行为聚类的两步分割算法

B. Higgs, M. Abbas
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引用次数: 37

摘要

本研究旨在探讨驾驶员在日常驾驶任务中使用不同驾驶风格的假设。采用两步算法进行分割和聚类。首先,根据时间分布将跟随汽车的时间段划分为不同的持续时间段。其次,根据相似性对前一步生成的片段进行聚类。在这个过程中使用了k-means聚类和优化技术的变体。用于聚类的分段质心是8维的,是根据纵向加速度、横向加速度、陀螺仪(偏航率)、车速、车道偏移、伽马(偏航角)、距离和距离率对每个分段中的数据点取平均值而产生的。这种方法的结果是汽车跟随行为的连续片段,以及显示类似数据和类似行为的片段集群。本文使用的样本包括三种不同的卡车司机,分别代表高风险司机、中等风险司机和低风险司机。总之,研究结果揭示了在车辆跟随期间、车辆跟随期间以及驾驶员之间的行为变化。每个驾驶员表现出独特的行为分布,但有些行为存在于多个驾驶员中,但频率不同。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A two-step segmentation algorithm for behavioral clustering of naturalistic driving styles
This research effort aims to investigate the hypothesis that drivers apply different driving styles in their daily driving tasks. A two-step algorithm is used for segmentation and clustering. First, a car-following period is broken into different duration segments that account for their temporal distribution. Second, the segments produced by the previous step are clustered based on similarity. Variations of k-means clustering and optimization techniques are used in this process. The segments centroids, used for clustering, are 8-dimensional and are produced by taking the average of the data points in each segment based on longitudinal acceleration, lateral acceleration, gyro (yaw rate), vehicle speed, lane offset, gamma (yaw angle), range, and range rate. The results of this methodology are continuous segments of car-following behavior as well as clusters of segments that show similar data and thus similar behaviors. The sample used in this paper included three different truck drivers that are representative of a high-risk driver, a medium-risk driver, and a low-risk driver. . In summary, the results revealed behavior that changed within a car-following period, between car-following periods, and between drivers. Each driver showed a unique distribution of behavior, but some of the behaviors existed in more than one driver but at different frequencies.
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