Intelligent Helipad Detection from Satellite Imagery

D. Specht, C. Johnson, N. Bouaynaya, G. Rasool
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Abstract

Location data about U.S. heliports is often inaccurate or nonexistent in the FAA's databases, which leaves pilots and air ambulance operators with inaccurate information about where to find safe landing zones. In the 2018 FAA Reauthorization Act, Congress required the FAA to collect better information from the helicopter industry under part 157, which covers the construction, alteration, activation and deactivation of airports and heliports. At the same time, there is no requirement to report private helipads to the FAA when constructed or removed, and some public heliports do not have up to date records. This paper proposes an autonomous system that can authenticate the coordinates in the FAA master database, as well as search for helipads in a designated large area. The proposed system is based on a convolutional neural network model that learns optimal helipad features from the data. We used the FAA's 5010 database and others to construct a benchmark database of rotocraft landing sites. The database consists of 9,324 aerial images, containing helipads, helistops, helidecks, and helicopter runways in rural and urban areas, as well as negative examples, such as rooftop buildings and fields. The dataset was then used to train various state-of-the-art convolutional neural network models. The outperforming model, EfficientNet-bθ, achieved nearly 95% accuracy on the validation set.
基于卫星图像的智能直升机停机坪探测
在FAA的数据库中,美国直升机场的位置数据往往是不准确的,或者根本不存在,这使得飞行员和空中救护人员在哪里可以找到安全降落区方面获得了不准确的信息。在2018年《联邦航空局再授权法案》中,国会要求联邦航空局根据第157部分从直升机行业收集更好的信息,该部分涵盖了机场和直升机场的建设、改造、启用和停用。同时,在建造或拆除私人直升机停机坪时,没有要求向美国联邦航空局报告,而且一些公共直升机停机坪没有最新的记录。本文提出了一种能够对FAA主数据库中的坐标进行认证,并在指定的大范围内搜索直升机停机坪的自主系统。该系统基于卷积神经网络模型,从数据中学习最优的直升机停机坪特征。我们使用FAA的5010数据库和其他数据库来构建旋翼飞行器着陆点的基准数据库。该数据库由9324张航拍图像组成,包括农村和城市地区的直升机停机坪、直升机停机坪、直升机停机坪和直升机跑道,以及屋顶建筑和田野等负面例子。然后使用该数据集训练各种最先进的卷积神经网络模型。效率网-bθ模型在验证集上的准确率接近95%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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