Autonomous vehicle social behavior for highway entrance ramp management

Junqing Wei, J. Dolan, B. Litkouhi
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引用次数: 97

Abstract

“Socially cooperative driving” is an integral part of our everyday driving, hence requiring special attention to imbue the autonomous driving with a more natural driving behavior. In this paper, an intention-integrated Prediction- and Cost function-Based algorithm (iPCB) framework is proposed to enable an autonomous vehicle to perform cooperative social behavior. An intention estimator is developed to extract the probability of surrounding agents' intentions in real time. Then for each candidate strategy, a prediction engine considering the interaction between host and surrounding agents is used to predict future scenarios. A cost function-based evaluation is applied to compute the cost for each scenario and select the decision corresponding to the lowest cost. The algorithm was tested in simulation on an autonomous vehicle cooperating with vehicles merging from freeway entrance ramps with 10,000 randomly generated scenarios. Compared with approaches that do not take social behavior into account, the iPCB algorithm shows a 41.7% performance improvement based on the chosen cost functions.
高速公路入口匝道管理中的自动驾驶车辆社会行为
“社会合作驾驶”是我们日常驾驶中不可或缺的一部分,因此需要特别注意给自动驾驶注入更自然的驾驶行为。本文提出了一种基于意图集成的基于预测和成本函数的算法(iPCB)框架,使自动驾驶车辆能够执行合作社会行为。提出了一种意图估计器,用于实时提取周围智能体意图的概率。然后,对于每个候选策略,使用考虑主机和周围代理之间相互作用的预测引擎来预测未来场景。应用基于成本函数的评估来计算每个场景的成本,并选择与最低成本相对应的决策。该算法在一辆自动驾驶汽车上进行了模拟测试,该自动驾驶汽车与从高速公路入口坡道合并的车辆进行了协作,并随机生成了10,000个场景。与不考虑社会行为的方法相比,基于所选择的成本函数,iPCB算法的性能提高了41.7%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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