论文标题
学习轨迹预测的概率交叉交通流量模型
Learning Probabilistic Intersection Traffic Models for Trajectory Prediction
论文作者
论文摘要
自主代理必须能够安全地与其他车辆互动以集成到城市环境中。这些代理的安全取决于他们预测与其他车辆未来轨迹相撞的能力,以重新融合和避免碰撞。预测碰撞所需的信息可以从特定环境中先前观察到的车辆轨迹中学到,从而产生交通模型。然后,可以将学习的交通模型作为先验知识纳入此环境中使用的任何轨迹估计方法。这项工作提出了一个基于高斯流程的概率交通模型,该模型用于量化交叉路口中的车辆行为。高斯工艺模型提供了平均车辆轨迹的估计,同时还捕获了车辆在交叉路口可能采取的不同路径之间的差异。该方法在一组时间序列位置轨迹上进行了证明。这些轨迹是通过删除对象识别错误和由于数据源处理而可能发生的遗漏框架来重建的。为了创建交叉路口流量模型,重建的轨迹是根据其源和目标车道聚集的。对于每个群集,创建一个高斯过程模型以捕获群集的平均行为和方差。为了显示高斯模型的适用性,仅通过部分观察对测试轨迹进行分类。绩效是通过正确分类车辆轨迹所需的观测值来量化的。交叉路口流量建模计算和分类过程均计时。这些时间是作为结果提供的,并证明该模型可以在合理的时间内构建,并且可以将分类过程用于在线应用程序。
Autonomous agents must be able to safely interact with other vehicles to integrate into urban environments. The safety of these agents is dependent on their ability to predict collisions with other vehicles' future trajectories for replanning and collision avoidance. The information needed to predict collisions can be learned from previously observed vehicle trajectories in a specific environment, generating a traffic model. The learned traffic model can then be incorporated as prior knowledge into any trajectory estimation method being used in this environment. This work presents a Gaussian process based probabilistic traffic model that is used to quantify vehicle behaviors in an intersection. The Gaussian process model provides estimates for the average vehicle trajectory, while also capturing the variance between the different paths a vehicle may take in the intersection. The method is demonstrated on a set of time-series position trajectories. These trajectories are reconstructed by removing object recognition errors and missed frames that may occur due to data source processing. To create the intersection traffic model, the reconstructed trajectories are clustered based on their source and destination lanes. For each cluster, a Gaussian process model is created to capture the average behavior and the variance of the cluster. To show the applicability of the Gaussian model, the test trajectories are classified with only partial observations. Performance is quantified by the number of observations required to correctly classify the vehicle trajectory. Both the intersection traffic modeling computations and the classification procedure are timed. These times are presented as results and demonstrate that the model can be constructed in a reasonable amount of time and the classification procedure can be used for online applications.