Map-based drone homing using shortcuts

D. Bender, W. Koch, D. Cremers
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引用次数: 13

Abstract

Up to the present day, GPS signals are the key component in almost all outdoor navigation tasks of robotic platforms. To obtain the platform pose, comprising the position as well as the orientation, and receive information at a higher frequency, the GPS signals are commonly used in a GPS-corrected inertial navigation system (INS). The GPS is a critical single point of failure, especially for autonomous drones. We propose an approach which creates a metric map of the observed area by fusing camera images with inertial and GPS data during its normal operation and use this map to steer a drone efficiently to its home position in the case of an GPS outage. A naive approach would follow the previously traveled path and get accurate pose estimates by comparing the current camera image with the previously created map. The presented procedure allows the usage of shortcuts through unexplored areas to minimize the travel distance. Thereby, we ensure to reach the starting point by taking into consideration the maximal positional drift while performing pure visual navigation in unknown areas. We achieved close to optimal results in intensive numerical studies and we demonstrate the usability of the algorithm in a realistic simulation environment.
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基于地图的无人机导航使用快捷键
迄今为止,GPS信号是机器人平台几乎所有户外导航任务的关键组成部分。为了获得平台位姿(包括位置和方向),并以更高的频率接收信息,GPS信号通常用于GPS校正惯导系统(INS)。GPS是一个关键的单点故障,特别是对于自主无人机。我们提出了一种方法,该方法通过在正常操作期间将相机图像与惯性和GPS数据融合来创建观测区域的度量地图,并使用该地图在GPS中断的情况下有效地将无人机引导到其主位置。一种朴素的方法是沿着之前走过的路径,通过比较当前的相机图像和之前创建的地图来获得准确的姿态估计。所提出的程序允许使用通过未探索区域的捷径来最小化旅行距离。因此,在未知区域进行纯视觉导航时,我们考虑了最大的位置漂移,保证了到达起始点。我们在密集的数值研究中获得了接近最优的结果,并在现实的模拟环境中证明了该算法的可用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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