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Fused Front Lane Trajectory Estimation Based on Current ADAS Sensor Configuration

机译:基于当前ADAS传感器配置的融合前车道轨迹估计

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Intelligent driving functions, such as ACC (Adaptive Cruise Control) and ALC (Automated Lane Changes), require lane assignment for objects. It relies on an accurate traffic lane path estimation. This paper proposes a fused front lane trajectory estimation algorithm based on current common ADAS sensor configuration. This trajectory is generated by fusing information of lane markers, front object trails and host motion state. This algorithm uses a clothoid lane model and its coefficients is estimated by a Kalman Filter, which weighs predicted model state and current measurement. This approach is verified by a set of real road test data.
机译:智能驾驶功能,如ACC(Adaptive Cruise Control)和ALC(自动通道更改),需要用于对象的车道分配。它依赖于准确的交通车道路径估计。本文提出了一种基于当前公共ADAS传感器配置的融合前车道轨迹估计算法。该轨迹是通过定影车道标记,前对象路径和主动运动状态的熔化信息来生成的。该算法使用卷帘车道模型,其系数由卡尔曼滤波器估计,该卡尔曼滤波器重量预测的模型状态和电流测量。通过一组真正的道路测试数据验证这种方法。

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