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Dynamic driving environment complexity quantification method and its verification

机译:动态驾驶环境复杂性量化方法及其验证

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摘要

To meet the requirements of scenario-based testing for Autonomous Vehicles (AVs), driving scenario characterization has become a critical issue. Existing studies have concluded that complexity is a necessary criticality measure for supporting critical AV testing scenario identification. However, the existing scenario complexity quantification studies mainly have two limitations, namely, subjective quantification methods highly rely on human participations and are difficult to apply to big data, and existing objective methods lack consideration of human driver characteristics and hence the performance cannot be guaranteed. To bridge these research gaps, a general objective quantification framework is proposed to quantify human drivers' judgement on driving environment complexity, by describing the vehicle-vehicle spatial-temporal interactions from the perspectives of quantity, variety, and relations. The model mainly contains three parts. First, to describe quantity information, a dynamic influencing area was set to identify the surrounding vehicles that contribute to driving environment complexity based on ResponsibilitySensitive Safety (RSS) theory. Second, considering the various surrounding vehicles' driving statuses, behaviors, and intentions, a basic vehicle-pair complexity quantification model was constructed based on encounter angles. Then, nonlinear relationships based upon information entropy theory were introduced to capture the heterogeneous longitudinal and lateral complexities. Third, a vehicle-pair complexity aggregation and smoothing step was conducted to reflect the characteristics of human driver's cognition. To demonstrate the abovementioned model, empirical Field Operational Test (FOT) data from Shanghai urban roadways were used to conduct case studies, and it can be concluded that this model can accurately describe the timing and extent of the complexity change, and reveal the complexity differences due to scenario type and spatial-temporal heterogeneity. Besides, Inter-Rater Reliability (IRR) index was calculated to validate the consistency of scenario complexity judgement between the proposed model and human drivers, and for performance comparison with the existing models. Finally, the applications of the proposed model and its further investigations have been discussed.
机译:为了满足基于场景的自动车辆(AVS)的测试要求,驾驶场景表征已成为一个关键问题。现有研究已经得出结论,复杂性是支持关键AV测试情景识别的必要临界措施。然而,现有场景复杂性量化研究主要有两个局限性,即主观量化方法高度依赖于人类参与,难以适用于大数据,现有的客观方法缺乏人类驾驶员特征,因此无法保证性能。为了弥合这些研究差距,提出了一般的客观量化框架,通过描述从数量,品种和关系的角度来看车辆空间 - 时间相互作用来量化人类司机对驾驶环境复杂性的判断。该模型主要包含三个部分。首先,为了描述数量信息,设定动态影响区域以识别基于责任安全性(RSS)理论的促进驾驶环境复杂性的周围车辆。其次,考虑到各种周围的车辆的驾驶状态,行为和意图,基于遇到角度构建基本的车辆对复杂度量化模型。然后,引入了基于信息熵理论的非线性关系以捕获异质纵向和横向复杂性。第三,进行车辆对复杂性聚集和平滑步骤以反映人司机认知的特征。为了证明上述模型,上海城市道路的经验现场操作试验(FOT)数据用于进行案例研究,可以得出结论,该模型可以准确描述复杂性变化的时间和程度,并揭示复杂性差异由于场景类型和空间 - 时间异质性。此外,计算了帧间可靠性(IRR)指数,以验证所提出的模型和人类驱动程序之间的情景复杂性判断的一致性,以及与现有模型的性能比较。最后,已经讨论了拟议模型的应用及其进一步调查。

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