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Probabilistic roadmap based path planning for an autonomous unmanned helicopter

机译:基于概率路线图的自主无人直升机的路径规划

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摘要

The emerging area of intelligent unmanned aerial vehicle (UAV) research has shown rapid development in recent years and offers a great number of research challenges for artificial intelligence. For both military and civil applications, there is a desire to develop more sophisticated UAV platforms where the emphasis is placed on development of intelligent capabilities. Imagine a mission scenario where a UAV is supplied with a 3D model of a region containing buildings and road structures and is instructed to fly to an arbitrary number of building structures and collect video streams of each of the building's respective facades. In this article, we describe a fully operational UAV platform which can achieve such missions autonomously. We focus on the path planner integrated with the platform which can generate collision free paths autonomously during such missions. Both probabilistic roadmap-based (PRM) and rapidly exploring random trees-based (RRT) algorithms have been used with the platform. The PRM-based path planner has been tested together with the UAV platform in an urban environment used for UAV experimentation.
机译:近年来,智能无人飞行器(UAV)研究的新兴领域显示出快速的发展,并为人工智能提出了许多研究挑战。对于军事和民用应用,都希望开发更加复杂的无人机平台,重点放在智能能力的开发上。想象一下这样的任务场景:向无人机提供包含建筑物和道路结构的区域的3D模型,并指示其飞行到任意数量的建筑物结构,并收集建筑物各个立面的视频流。在本文中,我们描述了一个完全可操作的无人机平台,该平台可以自主完成此类任务。我们专注于与平台集成的路径规划器,该平台可在此类任务期间自动生成无碰撞的路径。该平台同时使用了基于概率路线图(PRM)和快速探索基于随机树(RRT)的算法。基于PRM的路径规划器已与UAV平台一起在用于UAV实验的城市环境中进行了测试。

著录项

  • 来源
    《Journal of Intelligent and Fuzzy Systems》 |2006年第4期|395-405|共11页
  • 作者单位

    Link?ping University, Department of Computer and Information Science, 581 83 Link?ping, Sweden;

    Link?ping University, Department of Computer and Information Science, 581 83 Link?ping, Sweden;

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  • 正文语种 eng
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