Drivers have unique and rich driving behaviors when operating vehicles in traffic. This paper presents a novel driver behavior learning approach that captures the uniqueness and richness of human driver behavior in realistic driving scenarios. A stochastic inverse reinforcement learning (SIRL) approach is proposed to learn a distribution of cost function, which represents the richness of the human driver behavior with a given set of driver-specific demonstrations. Evaluations are conducted on the realistic driving data collected from the 3D driver-in-the-loop driving simulation. The results show that the learned stochastic driver model is capable of expressing the richness of the human driving strategies under different realistic driving scenarios. Compared to the deterministic baseline driver behavior model, the results reveal that the proposed stochastic driver behavior model can better replicate the driver's unique and rich driving strategies in a variety of traffic conditions.
翻译:驾驶员在驾驶交通车辆时具有独特和丰富的驾驶行为。 本文展示了一种新的驾驶员行为学习方法,在现实的驾驶情况中捕捉到驾驶员行为的独特性和丰富性。 提议了一种随机反向强化学习方法,以了解成本功能的分配,这代表了有一套特定驾驶员特定演示的人类驾驶员行为的丰富性。 对从3D驾驶员流动驾驶模拟中收集到的现实性驾驶数据进行了评价。 结果表明,学习过的随机驾驶员模型能够在不同现实驾驶情况下表达人类驾驶策略的丰富性。 与确定性基线驾驶员行为模型相比,结果显示,拟议的随机驾驶员行为模型可以在各种交通条件下更好地复制驾驶员的独特和丰富的驾驶策略。