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Use of Machine Learning to Create a Database of Wires for Helicopter Wire Strike Prevention

机译:使用机器学习创建用于直升机线罢工的电线数据库

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Rotorcraft collisions with wires and power lines have been a major cause of accidents over the past decades. They are rather difficult to predict and often result in fatalities. For this reason, there is a push to provide pilots with additional information regarding wires in the surrounding environment of the helicopter. However, the precise locations of power lines and other aerial wires are not available in any centralized database. This work proposes the development of a wire database in two phases. First, power line structures are detected from aerial imagery using deep learning techniques. Second, the complete power grid network is predicted using a centralized many-to-many graph search. The two-step framework produces an approximate medium-voltage grid stored as a set of connected line segments in GPS coordinates. Experiments are conducted in Washington D.C. using openly available datasets. Results show that utility pole locations can be predicted from satellite imagery using deep learning methods and a full grid network can be generated to a level of detail depending on computational power and available data for inference in the graph search. Even with limited computational resources and a noisy dataset, over a a fourth of the grid network is directly predicted within a range of seven meters, and the majority of the network is visually inferred from nearby detections. Moving forward, the goal is to apply the proposed framework to larger regions of the U.S., with rural and urban environments, to map all wires and cables that are a threat to rotorcraft safety.
机译:旋翼飞机与电线和电力线的碰撞是过去几十年意外的主要原因。他们相当难以预测,经常导致死亡。因此,有推动能够提供有关直升机周围环境中的导线的附加信息的飞行员。然而,在任何集中式数据库中不可用电力线和其他天线的精确位置。这项工作提出了两个阶段的导线数据库的开发。首先,使用深度学习技术从空中图像检测到电力线结构。其次,使用集中式多对多图搜索预测完整电网网络。两步框架产生近似的中电网作为GPS坐标中的一组连接线段存储。实验是在华盛顿州进行的。使用公开的数据集。结果表明,可以使用深度学习方法从卫星图像预测公用杆位置,并且可以根据计算能力和可用数据来生成完整的网格网络,并在图表搜索中推断的可用数据。即使使用有限的计算资源和嘈杂的数据集,在四分之一的网格网络上也直接预测在七米范围内,并且从附近的检测到视觉地推断出大部分网络。向前迈进,目标是将拟议的框架应用于美国的大区域,与农村和城市环境,映射威胁对旋翼安全的所有电线和电缆。

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