基于学习的交通感知扩展卡尔曼滤波

Liang Xu, R. Niu
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引用次数: 1

摘要

大多数车辆跟踪算法只考虑车辆的运动状态,而忽略了周围环境的信息,这些信息对驾驶员如何控制车辆也起着重要的作用。此外,如何表示交通信息及其对囊泡状态的影响也是一个具有挑战性的问题。在本文中,我们提出了一种交通感知扩展卡尔曼滤波(TrafficEKF)跟踪方法,该方法不仅考虑了车辆的运动动力学,还考虑了周围环境的信息。交通信息以鸟瞰图栅格化图像表示,视野内包括道路形状、交通灯状况和其他物体。交通信息对车辆行驶的影响由TrafficEKF从地面真实数据中学习。通过训练,该算法学习预测车辆的控制输入,优化EKF使用的过程噪声和测量噪声协方差矩阵。基于真实数据的实验,我们表明TrafficEKF显著优于手动调优的EKF和数据训练的EKF,后者忽略了环境信息。
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TrafficEKF: a Learning Based Traffic Aware Extended Kalman Filter
Most vehicle tracking algorithms only consider the vehicle’s kinematic state but ignore the information about the surrounding environment, which also plays an important role affecting how the driver controls the vehicle. In addition, how to represent the traffic information and its effect on the vesicle’s state is a challenging problem. In this paper, we propose a tracking method called traffic aware extended Kalman filter (TrafficEKF), which not only incorporates the vehicle’s kinematic dynamics, but also the information from the surrounding environment. The traffic information has been represented by a bird-eye-view rasterized image, with the road shape, traffic light conditions, and other objects inside the field of view. The effect of the traffic information on vehicle driving is learned by TrafficEKF from the ground truth data. Through training, the algorithm learns to predict the control input to the vehicle and to optimize the process and measurement noise covariance matrices used by the EKF. Based on experiments with real data, we show that the TrafficEKF significantly outperforms both a manually tuned EKF, and a data trained EKF, which ignore the environment information.
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