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Three-dimensional (3D) Dynamic Obstacle Perception in a Detect-and-Avoid Framework for Unmanned Aerial Vehicles

机译:无人驾驶飞机的检测与避免框架中的三维(3D)动态障碍感知

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In this paper, a 3D dynamic obstacle perception is developed in a detect-and-avoid (DAA) framework for unmanned aerial vehicles (UAVs) or drones. The framework requires only an end point coordinate for collision-free path-planning and execution in an environment with dynamic obstacles. The sense portion of the DAA framework takes data from an mmWave sensor and a depth camera while the detect portion of the framework updates a probabilistic octree when static and dynamic obstacles are sensed. Perception of dynamic obstacle was achieved by implementing an algorithm that clears the sensor’s field of vision before computing the occupied voxels and populating the probabilistic octree. The avoidance portion of the framework is based on rapidly-exploring random tree (RRT) but the framework is flexible to allow other types of planners. This work develops the DAA framework for a UAV in a dynamic 3D environment by modifying the MoveIt framework. The framework is implemented on a UAV platform equipped with an on-board computational unit. The simulation and indoor experiments were conducted, which show that the modified DAA framework with dynamic 3D obstacle perception can successfully sense, detect and avoid obstacle. Additionally, the proposed perception method reduced the path re-plan time.
机译:在本文中,在无人驾驶飞机(UAV)或无人机的“检测与避免”(DAA)框架中开发了3D动态障碍感知。该框架仅需要一个端点坐标即可在具有动态障碍的环境中进行无冲突的路径规划和执行。 DAA框架的感应部分从毫米波传感器和深度摄像头获取数据,而框架的检测部分在感测到静态和动态障碍物时会更新概率八叉树。动态障碍的感知是通过实现一种算法来实现的,该算法在计算占用的体素并填充概率八叉树之前先清除传感器的视野。该框架的回避部分基于快速探索的随机树(RRT),但该框架很灵活,可以支持其他类型的计划者。这项工作通过修改MoveIt框架,为动态3D环境中的无人机开发了DAA框架。该框架在配备有机载计算单元的UAV平台上实现。进行了仿真和室内实验,结果表明,改进的具有动态3D障碍物感知能力的DAA框架可以成功地感知,检测和避开障碍物。另外,提出的感知方法减少了路径重新计划的时间。

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