3D Mapping and Simultaneous Navigation for Multi Micro Aerial Vehicles in Indoor Environments

M. B. Dilaver, Furkan Çakmak, E. Uslu, M. Amasyali, S. Yavuz
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Abstract

One of the platforms that autonomous exploration applications can be used is micro aerial vehicles, which are used by robotic scientists, because of their high dynamic capabilities. A robot needs to do navigation in its surrounding environment to be able to do exploration. In outdoor and indoor environments with obstacles around, sensing an environment and creating its map to do navigation is a common practice in robotic studies. An aerial vehicle is able to reach to a target position without crashing into static and dynamic obstacles, with the help of costmaps created in navigation applications. To prevent an aerial vehicle, which is trying to find a path to a target position, from getting crashed into other vehicles in applications with multiple aerial vehicles, that aerial vehicle needs to take into account the paths that found by other vehicles. In this way it's possible to prevent aerial vehicles getting crashed into each other. In this work, a simultaneous navigation application is developed for aerial vehicles that can build concurrent 3D multi maps. Experiments have been done in Gazebo simulation environment of ROS framework.
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室内环境下多微型飞行器的三维测绘与同步导航
自主探索应用的平台之一是微型飞行器,机器人科学家使用这种飞行器,因为它们具有高动态能力。机器人需要在周围环境中进行导航才能进行探索。在有障碍物的室外和室内环境中,感知环境并创建其地图进行导航是机器人研究中的常见做法。在导航应用程序中创建的成本地图的帮助下,飞行器能够到达目标位置,而不会撞上静态和动态障碍物。在多架飞行器的应用中,为了防止试图找到到达目标位置的路径的飞行器与其他飞行器相撞,该飞行器需要考虑其他飞行器找到的路径。这样就有可能防止飞行器相互碰撞。在这项工作中,开发了一种可以同时构建三维多地图的飞行器同步导航应用程序。在ROS框架的Gazebo仿真环境中进行了实验。
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