Risk assessment is a central element for the development and validation of Autonomous Vehicles (AV). It comprises a combination of occurrence probability and severity of future critical events. Time Headway (TH) as well as Time-To-Contact (TTC) are commonly used risk metrics and have qualitative relations to occurrence probability. However, they lack theoretical derivations and additionally they are designed to only cover special types of traffic scenarios (e.g. following between single car pairs). In this paper, we present a probabilistic situation risk model based on survival analysis considerations and extend it to naturally incorporate sensory, temporal and behavioral uncertainties as they arise in real-world scenarios. The resulting Risk Spot Detector (RSD) is applied and tested on naturalistic driving data of a multi-lane boulevard with several intersections, enabling the visualization of road criticality maps. Compared to TH and TTC, our approach is more selective and specific in predicting risk. RSD concentrates on driving sections of high vehicle density where large accelerations and decelerations or approaches with high velocity occur.
翻译:风险评估是开发和验证自主车辆(AV)的一个核心要素,它包括未来关键事件的发生概率和严重程度的组合。时间航道和时间与接触(TTC)是常用的风险衡量标准,具有发生概率的质量关系,然而,它们缺乏理论推断,而且设计时仅涵盖特殊类型的交通情况(例如,单对汽车之间),在本文中,我们根据生存分析因素提出一种概率风险模型,将其扩展至自然地纳入现实世界情景中出现的感官、时间和行为不确定性。由此产生的风险点探测器(RSD)应用并测试具有多个交叉点的多环形浮游自然驱动数据,从而能够对道路临界性图进行可视化。与TH和TTC相比,我们的方法在预测风险方面更具选择性和具体性。RSD浓缩高车辆密度的驾驶部分,在这些部分会发生大的加速度和减速或高速方法。</s>