Addressing airport traffic jams is one of the most crucial and challenging tasks in the remote sensing field, especially for the busiest airports. Several solutions have been employed to address this problem depending on the airplane detection process. The most effective solutions are through the use of satellite images with deep learning techniques. Such solutions, however, are significantly costly and require satellites and modern complicated technology which may not be available in most countries worldwide. This paper provides a universal, low cost and fast solution for airplane detection in airports. This paper recommends the use of drones instead of satellites to feed the system with drone images using a proposed deep learning model. Drone images are employed as the dataset to train and evaluate a mask region convolution neural network (RCNN) model. The Mask RCNN model applies faster RCNN as its base configuration with critical modifications on its head neural network constructions. The model detects whether or not an airplane is present and includes mask estimations to approximate surface area and length, which will help future works identify the airplane type. This solution can be easily implemented globally as it is a low-cost and fast solution for airplane detection at airports. The evaluation process reveals promising results according to Microsoft Common Objects in Context (COCO) metrics.
翻译:解决机场交通堵塞是遥感领域最关键和最具挑战性的任务之一,特别是对于最繁忙的机场而言。根据飞机探测过程,已经采用了几种解决办法来解决这一问题。最有效的解决办法是使用具有深层学习技术的卫星图像。然而,这些解决办法代价巨大,需要卫星和现代复杂技术,而全世界大多数国家可能没有这种技术。本文件为机场的飞机探测提供了一个普遍、低成本和快速的解决方案。本文件建议使用无人机而不是卫星,用无人机图像为系统提供使用拟议的深层学习模型。Drone图像被用作数据集,用于训练和评价掩码区域神经神经网络(RCNNN)模型。Mask RCNNN模型将更快的RCNNN用作基础配置,对其主神经网络构造进行重大修改。模型检测飞机是否存在,包括近似表面面积和长度的掩码估计,这将有助于未来工程确定飞机类型。这一解决方案可以很容易在全球实施,因为它是机场飞机探测低成本和快速的解决方案。评估过程显示微软通用天体(CO)基准的预期结果。