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Highly accurate maximum likelihood laser mapping by jointly optimizing laser points and robot poses

机译:通过共同优化激光点和机器人姿势来进行高精度的最大似然激光测绘

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摘要

In this paper we describe an algorithm for learning highly accurate laser-based maps that treats the overall mapping problem as a joint optimization problem over robot poses and laser points. We assume that a laser range finder senses points sampled from a regular surface and we utilize an improved likelihood function that accounts for two phenomena affecting the laser measurements that are often neglected: the conic shape of the laser beam and the incidence angle. To solve the entire problem we apply an optimization procedure that jointly adjusts the position of all the robot poses and all points in the scans. As a result, we obtain highly accurate maps. We evaluated our approach using simulated and real-world data and we show that utilizing the estimated maps greatly improves the localization accuracy of robots. The results furthermore suggest that the accuracy of the resulting map can exceed the resolution of the laser sensors used. © 2011 IEEE.
机译:在本文中,我们描述了一种用于学习高度精确的基于激光的地图的算法,该算法将整体映射问题视为机器人姿势和激光点的联合优化问题。我们假设激光测距仪可感测从规则表面采样的点,并利用一种改进的似然函数,该函数解决了影响经常被忽略的两种影响激光测量的现象:激光束的圆锥形状和入射角。为了解决整个问题,我们应用了一个优化程序,该程序可以共同调整所有机器人姿势和扫描中所有点的位置。结果,我们获得了高度准确的地图。我们使用模拟和真实数据评估了我们的方法,并表明利用估计的地图可以大大提高机器人的定位精度。结果还表明,所得到的图的精度可以超过所使用的激光传感器的分辨率。 ©2011 IEEE。

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