自主无人机飞行安全的计算机视觉研究综述及基于视觉的安全著陆管道实例

Efstratios Kakaletsis, C. Symeonidis, Maria Tzelepi, Ioannis Mademlis, A. Tefas, N. Nikolaidis, I. Pitas
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引用次数: 31

摘要

近年来,无人驾驶飞行器(uav,或“无人机”)在民用和军事应用中都非常有用。飞行安全是无人机导航的一个关键问题,必须确保准确遵守最近颁布的法规和条例。自主无人机和无人机群的新兴应用引发了其他问题,因此有必要将安全和法规意识融入相关算法和架构中。计算机视觉在这种自主功能中起着关键作用。尽管自主无人机技术的主要方面(例如,路径规划、导航控制、着陆控制、测绘和定位、目标探测/跟踪)已经成熟且覆盖很好,但在设计用于非结构化环境的自主无人机平台时,通常将确保在人群附近安全飞行、避免经过人员或保证发生故障时的紧急着陆能力视为事后考虑。这一事实反映在当前文献中对上述问题的零星报道中。这篇综述试图从计算机视觉的角度来纠正这种情况。它从多个方面考察了该领域,包括世界各地的法规和相关的当前技术。最后,由于迄今为止对完整的无人机安全飞行和着陆管道的尝试很少,因此考虑到当前自主无人机中存在的所有问题,介绍了一个基于计算机视觉的无人机飞行安全管道示例。内容与任何类型的自主无人机飞行相关(例如,用于电影/电视制作,新闻采集,搜索和救援,监视,检查,绘图,野生动物监测,人群监测/管理),使其成为广泛关注的话题。
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Computer Vision for Autonomous UAV Flight Safety: An Overview and a Vision-based Safe Landing Pipeline Example
Recent years have seen an unprecedented spread of Unmanned Aerial Vehicles (UAVs, or “drones”), which are highly useful for both civilian and military applications. Flight safety is a crucial issue in UAV navigation, having to ensure accurate compliance with recently legislated rules and regulations. The emerging use of autonomous drones and UAV swarms raises additional issues, making it necessary to transfuse safety- and regulations-awareness to relevant algorithms and architectures. Computer vision plays a pivotal role in such autonomous functionalities. Although the main aspects of autonomous UAV technologies (e.g., path planning, navigation control, landing control, mapping and localization, target detection/tracking) are already mature and well-covered, ensuring safe flying in the vicinity of crowds, avoidance of passing over persons, or guaranteed emergency landing capabilities in case of malfunctions, are generally treated as an afterthought when designing autonomous UAV platforms for unstructured environments. This fact is reflected in the fragmentary coverage of the above issues in current literature. This overview attempts to remedy this situation, from the point of view of computer vision. It examines the field from multiple aspects, including regulations across the world and relevant current technologies. Finally, since very few attempts have been made so far towards a complete UAV safety flight and landing pipeline, an example computer vision-based UAV flight safety pipeline is introduced, taking into account all issues present in current autonomous drones. The content is relevant to any kind of autonomous drone flight (e.g., for movie/TV production, news-gathering, search and rescue, surveillance, inspection, mapping, wildlife monitoring, crowd monitoring/management), making this a topic of broad interest.
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