自动驾驶汽车自主导航中多地图定位优化技术

Salvador Dominguez, Bogdan Khomutenko, G. Garcia, P. Martinet
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引用次数: 18

摘要

自动驾驶汽车的导航需要非常精确的定位,覆盖广泛的区域和长距离。此外,它们必须以比传统移动机器人更快的速度完成任务。本文报道了一种优化地图序列在旅途中的位置的有效方法。我们利用二维占用网格地图(从现在起称为子地图)的短期精度和减少磁盘空间的定位优势,以及融合里程计和GPS测量的卡尔曼滤波器的长期全局一致性。在我们的方法中,使用水平平面激光雷达和里程测量来执行2D-SLAM生成子地图,并使用EKF生成全球坐标下汽车跟随的轨迹。在行程中,在完成每个子地图之后,对最后一组子地图应用一个松弛过程,使用全局路径和map的局部路径对它们进行全局定位。这种方法的重要性在于它的性能,消耗较少的计算资源,因此它可以在具有传统特性的计算机上实时工作,并且它的鲁棒性使其适合用于自动驾驶汽车,因为它不过度依赖于GPS信号的可用性或汽车周围移动物体的最终外观。在法国南特的郊区和市中心进行了广泛的测试,覆盖了25公里的距离,并在不同的交通条件下进行了测试,获得了令人满意的自动驾驶结果。
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An Optimization Technique for Positioning Multiple Maps for Self-Driving Car's Autonomous Navigation
Self-driving car's navigation requires a very precise localization covering wide areas and long distances. Moreover, they have to do it at faster speeds than conventional mobile robots. This paper reports on an efficient technique to optimize the position of a sequence of maps along a journey. We take advantage of the short-term precision and reduced space on disk of the localization using 2D occupancy grid maps, from now on called sub-maps, as well as, the long-term global consistency of a Kalman filter that fuses odometry and GPS measurements. In our approach, horizontal planar LiDARs and odometry measurements are used to perform 2D-SLAM generating the sub-maps, and the EKF to generate the trajectory followed by the car in global coordinates. During the trip, after finishing each sub-map, a relaxation process is applied to a set of the last sub-maps to position them globally using both, global and map's local path. The importance of this method lies on its performance, expending low computing resources, so it can work in real time on a computer with conventional characteristics and on its robustness which makes it suitable for being used on a self-driving car as it doesn't depend excessively on the availability of GPS signal or the eventual appearance of moving objects around the car. Extensive testing has been performed in the suburbs and in the down-town of Nantes (France) covering a distance of 25 kilometers with different traffic conditions obtaining satisfactory results for autonomous driving.
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