自然驾驶中的场景类:基于自编码器的周围物体轨迹的空间和时间顺序聚类

Nico Epple, Tobias Hankofer, A. Riener
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引用次数: 1

摘要

周围车辆是描述交通场景的基本特征之一。除了机动(如转弯)和场景(如高速公路)之外,这些特征很难用文字或标签来捕捉。识别和评价这些场景特征对道路安全具有重要意义。因此,在分析自然驾驶数据时,为了能够定量地评估驾驶员行为和整个系统的影响,场景的组成是必不可少的。在这项工作中,我们提出了一种从自我车辆的角度对周围车辆进行分组的方法,并将其用于改进的场景分类。在两步方法中,我们将每个车辆独立地分组在一个场景中。我们将空间域(驱动管)与时间域(性能风格)分离。空间域的聚类使用分层分层算法,以允许集群深度的变化。通过合并的结果,我们实现了一种异常值检测和一种量化场景中轨迹频率的方法。由此,情景的唯一性,例如,再模拟,被量化。这使我们能够识别周围车辆的类似机动集群,例如,具有相同速度和加速过程的变道机动组。
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Scenario Classes in Naturalistic Driving: Autoencoder-based Spatial and Time-Sequential Clustering of Surrounding Object Trajectories
Surrounding vehicles are among the essential features to describe traffic scenarios. Besides maneuver (e.g., turn) and scene (e.g., highway), these features are hard to capture in words or labels. The recognition and evaluation of these scenario features are important for road safety. Consequently, when analyzing naturalistic driving data, the composition of the scenarios is essential in order to be able to evaluate driver behavior, and the effects of the overall system quantitatively. In this work, we propose a method to group surrounding vehicles from the perspective of the ego-vehicle and use it for an improved scenario classification. In a two-step approach, we group each vehicle within a scenario independently. We separate the spatial domain (driving tube) from the time domain (performance style). The spatial domain is clustered using a hierarchical ward algorithm to allow for variation of the cluster depth. With the merged result, we realize an outlier detection and a method to quantify the frequency of trajectories within scenarios. From this, the uniqueness of scenarios, e.g., for resimulation, is quantified. This enables us to identify clusters of similar maneuvers of surrounding vehicles up to, for example, lane change maneuver groups of the same speed and acceleration course.
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