SPOT: A tool for set-based prediction of traffic participants

Markus Koschi, M. Althoff
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引用次数: 68

Abstract

Predicting the movement of other traffic participants is an integral part in the motion planning of most automated road vehicles. While simple predictions, e.g. based on assuming constant velocity, may suffice for deciding a driving strategy, predicting the set of all possible behaviors is required to ensure safe motion plans. In this work, we propose a novel tool for the latter problem based on reachability analysis: Set-Based Prediction Of Traffic Participants (SPOT). Our tool can predict the future occupancy of other traffic participants, including all possible maneuvers (e.g. full acceleration, full braking, and arbitrary lane changes), by considering physical constraints and assuming that the traffic participants abide by the traffic rules. However, we remove assumptions for each traffic participant individually as soon as a violation of a traffic rule is detected. Removal of assumptions automatically results in larger occupancies and thus a smaller drivable area for the ego vehicle, ensuring that the ego vehicle does not cause a collision during the time horizon of the prediction. Experimental results show that we obtain the set of future occupancies within a fraction of the prediction horizon. Our tool is available at spot.in.tum.de.
SPOT:一个基于集的交通参与者预测工具
预测其他交通参与者的运动是大多数自动道路车辆运动规划中不可或缺的一部分。虽然简单的预测,例如基于假设恒定速度,可能足以决定驾驶策略,但预测所有可能行为的集合需要确保安全的运动计划。在这项工作中,我们提出了一个基于可达性分析的新工具:基于集的交通参与者预测(SPOT)。我们的工具可以通过考虑物理约束并假设交通参与者遵守交通规则,预测其他交通参与者未来的占用情况,包括所有可能的机动(例如,完全加速、完全制动和任意变道)。然而,一旦检测到违反交通规则,我们就会单独删除每个交通参与者的假设。取消假设会自动导致更大的占有率,从而缩小自我车辆的行驶区域,确保自我车辆在预测的时间范围内不会造成碰撞。实验结果表明,我们在预测视界的一小部分范围内得到了未来占位的集合。我们的工具可以在spot.in. turn .de找到。
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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