基于云的无人机无线流导航视觉地图重建

A. Q. Nguyen, M. Ha, T. Tran, Dung Daniel Ngo, N. P. Dao, D. T. Tran, J. Pestana
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引用次数: 0

摘要

障碍物地图是自主无人机实现导航的关键。用于三维地图重建的传感器有:激光雷达、雷达和摄像头。然而,由于机载计算资源的限制,从无人机上重建三维障碍物地图仍然是一项具有挑战性的任务。随着无线流媒体技术的发展,一种基于云的可视化地图重建方案将解决这一问题。使用无线流媒体进行视觉地图重建的协同空中-地面系统包括几架无人机和一个固定或移动地面站。图像从无人机上配备的摄像头拍摄,同时通过高速无线链路(如WiFi或移动网络(4G, 5G))流式传输到地面站。然后通过非常强大的计算机从图像中快速重建地图,然后输出障碍物地图被发送回无人机进行导航任务。在本文中,我们提出并实现了一种基于云的无人机导航视觉地图重建与WiFi链路。该系统在室内和室外实验中均表现良好,每张图像的传输时间小于0.29 s,在分辨率为1920x1080 px的87张图像中,总3D重建时间小于205 s。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Cloud-Based Visual Map Reconstruction for UAV Navigation Using Wireless Streaming
Obstacle maps are essential for autonomous UAVs to achieve navigation. Different kinds of sensors are used for 3D map reconstruction, such as: LIDAR, radar and cameras. However, 3D obstacle map reconstruction from UAVs has been still a challenging task due to the limitation of on-board computational resources. With the development of wireless streaming technologies, a cloud-based solution for visual map reconstruction would solve the issue. A collaborative aerial-ground system for visual map reconstruction using wireless streaming includes several drones and a fixed or mobile ground station. Images are taken from equipped cameras on the UAV while being streamed to a ground station through a high-speed wireless link, such as: WiFi or the mobile network (4G, 5G). The map is then quickly reconstructed from the images by means of a very strong computer, and the output obstacles map is then sent back to the UAV for navigation tasks. In this paper, we propose and implement a cloud-based visual map reconstruction for UAV navigation with a WiFi link. The system worked well for both indoor and outdoor experiments with achieved transfer times per image of less than 0.29 s and a total 3D reconstruction time of less than 205 s for 87 images with a resolution of 1920x1080 px.
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