In this paper, we use the concept of artificial risk fields to predict how human operators control a vehicle in response to upcoming road situations. A risk field assigns a non-negative risk measure to the state of the system in order to model how close that state is to violating a safety property, such as hitting an obstacle or exiting the road. Using risk fields, we construct a stochastic model of the operator that maps from states to likely actions. We demonstrate our approach on a driving task wherein human subjects are asked to drive a car inside a realistic driving simulator while avoiding obstacles placed on the road. We show that the most likely risk field given the driving data is obtained by solving a convex optimization problem. Next, we apply the inferred risk fields to generate distinct driving behaviors while comparing predicted trajectories against ground truth measurements. We observe that the risk fields are excellent at predicting future trajectory distributions with high prediction accuracy for up to twenty seconds prediction horizons. At the same time, we observe some challenges such as the inability to account for how drivers choose to accelerate/decelerate based on the road conditions.
翻译:在本文中,我们使用人工风险域的概念来预测人类操作者如何在即将到来的公路状况下控制车辆。一个风险域将非负风险度量分配给系统状态,以模拟该状态接近违反安全财产的程度,例如撞击障碍或离开道路。我们利用风险域,构建一个操作者从国家地图到可能行动的随机模型。我们展示了我们关于驾驶任务的方法,即要求人类主体驾驶汽车在现实的驾驶模拟器内驾驶汽车,同时避免在路上设置障碍。我们显示,根据驾驶数据通过解决盘旋优化问题获得的最有可能的风险域。接下来,我们应用推断的风险域来产生不同的驾驶行为,同时对照地面真实度测量对预测轨迹进行对比。我们观察到,风险域非常出色地预测未来轨迹分布,预测准确度高达20秒的预测地平线。与此同时,我们观察到一些挑战,例如无法说明司机如何选择在道路状况下加速/减速。