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Self-localization of Intelligent Vehicles Based on Environmental Contours

机译:基于环境轮廓的智能汽车自定位

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High-precision and robust self-localization is one of basic requirements for intelligent vehicles and related applications, because it provides necessary location information for path planning, behavioral decisions. In this paper a localization method based on IBEO LUX scanners, vehicle sensors and priori maps is proposed. The environmental contour features such as trees, street lamps, green belts and building outlines which are fused by the laser scanners and vehicle information are served as localization information. These features are associated with priori feature maps and the optimal vehicle position estimate is obtained by the Monte Carlo Localization framework. Experimental results show that the mean lateral error is less than 10cm and the mean longitudinal error is less than 20cm. So the localization algorithm introduced can meet the requirements of automatic driving demand.
机译:高精度和强大的自定位是智能车辆及其相关应用程序的基本要求之一,因为它为路径规划和行为决策提供了必要的位置信息。本文提出了一种基于IBEO LUX扫描仪,车辆传感器和先验地图的定位方法。激光扫描仪和车辆信息融合的树木,路灯,绿化带和建筑物轮廓等环境轮廓特征将用作定位信息。这些特征与先验特征图相关联,并且最佳车辆位置估计是通过蒙特卡洛定位框架获得的。实验结果表明,平均横向误差小于10cm,平均纵向误差小于20cm。因此引入的定位算法可以满足自动驾驶需求。

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