Inference of Vehicle Lane Change Intention Using Multiple Model Estimator in Automated Highway Driving

Jongyong Do, Kyoungseok Han, Seibum B. Choi
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Abstract

One of the most critical topics in vehicle active safety control is collision avoidance(CA) maneuver. To ensure the robustness of the CA, it is essential to recognize the behavior of surrounding vehicles accurately. In particular, a safer path can be generated, if the intention of changing lanes of surrounding vehicles can be predicted. Existing studies on lane change intention prediction are primarily based on machine learning, and it is difficult to respond to unexpected situations that have not been learned. In this study, a method for predicting lane change intention in real time based on the trajectory of surrounding vehicles is presented. It is assumed that the location of the lane is known through the map, and the global coordinate system is transformed into the Frenet coordinate system to maintain generality regardless of the curvature of the road. And the paths that the target vehicle can travel are modeled as cubic spline curves on the Frenet coordinate system. Through the multiple model estimator, which operates the path models in parallel, it finds the most probable path and predicts the lane change intention. The performance of the lane change intention prediction algorithm is verified through highD, a German highway vehicle trajectories dataset.
基于多模型估计器的高速公路自动驾驶车辆变道意图推断
避碰机动是汽车主动安全控制的关键问题之一。为了保证自动驾驶算法的鲁棒性,必须准确识别周围车辆的行为。特别是,如果可以预测到周围车辆的变道意图,就可以生成更安全的路径。现有的变道意图预测研究主要基于机器学习,难以对未学习到的意外情况做出反应。本文提出了一种基于周围车辆轨迹的实时变道意图预测方法。假设通过地图知道车道的位置,并将全球坐标系转换为弗莱内坐标系,以保持与道路曲率无关的通用性。在Frenet坐标系下,以三次样条曲线的形式对目标车辆的行驶路径进行建模。通过对路径模型进行并行运算的多模型估计器,找到最可能的路径并预测变道意图。通过德国公路车辆轨迹数据集highD验证了变道意图预测算法的性能。
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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