Accurately modeling the behavior of traffic participants is essential for safely and efficiently navigating an autonomous vehicle through heavy traffic. We propose a method, based on the intelligent driver model, that allows us to accurately model individual driver behaviors from only a small number of frames using easily observable features. On average, this method makes prediction errors that have less than 1 meter difference from an oracle with full-information when analyzed over a 10-second horizon of highway driving. We then validate the efficiency of our method through extensive analysis against a competitive data-driven method such as Reinforcement Learning that may be of independent interest.
翻译:精确地模拟交通参与者的行为是安全、高效地通过重型交通驾驶自主车辆的关键。 我们提出了一个基于智能驾驶模型的方法,使我们能够精确地从少数使用易于观察的特征的框架中模拟个别驾驶者的行为。 平均而言,这种方法在10秒钟的高速公路驾驶水平上分析时,产生与带有完整信息的甲骨文差1米以下的预测错误。 然后,我们通过对竞争性数据驱动方法进行广泛分析,例如可能具有独立利益的强化学习,来验证我们方法的效率。