There will be a long time when automated vehicles are mixed with human-driven vehicles. Understanding how drivers assess driving risks and modelling their individual differences are significant for automated vehicles to develop human-like and customized behaviors, so as to gain people's trust and acceptance. However, the reality is that existing driving risk models are developed at a statistical level, and no one scenario-universal driving risk measure can correctly describe risk perception differences among drivers. We proposed a concise yet effective model, called Potential Damage Risk (PODAR) model, which provides a universal and physically meaningful structure for driving risk estimation and is suitable for general non-collision and collision scenes. In this paper, based on an open-accessed dataset collected from an obstacle avoidance experiment, four physical-interpretable parameters in PODAR, including prediction horizon, damage scale, temporal attenuation, and spatial attention, are calibrated and consequently individual risk perception models are established for each driver. The results prove the capacity and potential of PODAR to model individual differences in perceived driving risk, laying the foundation for autonomous driving to develop human-like behaviors.
翻译:了解驾驶员如何评估驾驶风险和模拟其个人差异对于自动化车辆发展人性化和定制行为具有重大意义,以便获得人们的信任和接受。然而,现实是,现有的驾驶风险模型是在统计一级开发的,没有一种情景通用的驾驶风险计量办法能够正确描述驾驶员对风险的看法差异。我们提出了一个简洁而有效的模型,称为潜在损害风险模型,为驾驶风险估计提供了一个普遍和具有实际意义的结构,适合一般的非循环和碰撞场景。在本文中,基于从避免障碍试验中收集的开放数据集,对PODAR的四个物理解释参数进行了校准,包括预测地平面、损害规模、时间衰减和空间关注,因此为每个驾驶员建立了个人风险认识模型。结果证明,PODAR有能力和潜力建模个人对已知的驾驶风险的不同之处,为自主驾驶以发展人性行为奠定了基础。