交通状况下行为预测的学习概念

R. Graf, H. Deusch, M. Fritzsche, K. Dietmayer
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引用次数: 23

摘要

未来的驾驶辅助系统将需要提高处理复杂驾驶情况的能力,并根据情况的严重性和风险最小化的要求做出适当的反应。例如,在高速公路上驾驶的人类,能够根据自己的经验判断车辆的插队情况。本文提出的想法是使这些人类能力适应技术系统,并随着时间的推移学习不同的情况。基于案例的推理应用于预测道路参与者的行为,因为它结合了学习方面,基于从驾驶历史中获得的知识。这个概念通过将实际驾驶情况与存储的情况相匹配来促进识别。首先,对高速公路上相邻车道上车辆的动作预测进行了评估,重点关注了车辆切入主车车道的问题;
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A learning concept for behavior prediction in traffic situations
Future driving assistance systems will need an increase ability to handle complex driving situations and to react appropriately according to situation criticality and requirements for risk minimization. Humans, driving on motorways, are able to judge, for example, cut-in situations of vehicles because of their experiences. The idea presented in this paper is to adapt these human abilities to technical systems and learn different situations over time. Case-Based Reasoning is applied to predict the behavior of road participants because it incorporates a learning aspect, based on knowledge acquired from the driving history. This concept facilitates recognition by matching actual driving situations against stored ones. In the first instance, the concept is evaluated on action prediction of vehicles on adjacent lanes on motorways and focuses on the aspect of vehicles cutting into the lane of the host vehicle.
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