基于SVM的变道车辆轨迹预测

R. S. Tomar, S. Verma, G. Tomar
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引用次数: 14

摘要

在密集的交通中,变道操作具有潜在的危险,驾驶员对车辆间隙的错误估计可能导致事故。这表明有必要预先警告驾驶员变道的可行性。这需要对飞行器的轨迹进行早期预测。变道有三个阶段:规划阶段、变道阶段和调整阶段。如果在第一阶段就发现驾驶员的变道意图,就可以给予适当的建议。否则,通过远程轨迹预测来预测即将发生的碰撞将需要一种反应性方法。本文提出了基于支持向量机的变道车辆轨迹预测方法。支持向量机用于LC飞行器的近程和远程轨迹预测。将飞行器轨迹建模为离散时间序列。在预测中选取了足够数量的值来包括规划、变道和时间序列的调整阶段。基于支持向量机的预测使用实际的NGSIM (Next Generation Simulation)现场数据进行。支持向量机优于先前的算法,并被证明在早期检测道路上驾驶员车道变化方面特别有效。
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SVM Based Trajectory Predictions of Lane Changing Vehicles
In dense traffic, a lane change maneuver is potentially dangerous and a driver's erroneous estimation of inter vehicle gaps may cause an accident. This signifies the necessity of forewarning the driver of the feasibility of lane change. This requires an early prediction of the trajectory of vehicles. A lane change has three distinct phases, planning phase, lane change phase and the adjustment phase. If the lane change intent of a driver is discovered in the first phase, he can be suitably advised. Else, the prediction of an impending collision through long range trajectory prediction would require a reactive approach. In this paper, we present support vector machine (SVM) based prediction of the trajectory of lane changing vehicle. SVM is used for both short range and long range trajectory prediction of the LC vehicle. A vehicle trajectory is modeled as a discrete time series. Sufficient number of values is taken to include planning, lane change and the adjustment phases of the time series in the prediction. The SVM based prediction is performed using actual Next Generation Simulation (NGSIM) field data. SVMs outperformed earlier algorithms and proved especially effective in early detection of driver lane changes on the road.
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