Faculty of Automatic Control and Computers, University Politehnica of Bucharest, RO-060042 Bucharest, Romania.
National Institute for Research and Development in Informatics, RO-011455 Bucharest, Romania.
Sensors (Basel). 2020 Nov 13;20(22):6485. doi: 10.3390/s20226485.
In order to improve the traffic in large cities and to avoid congestion, advanced methods of detecting and predicting vehicle behaviour are needed. Such methods require complex information regarding the number of vehicles on the roads, their positions, directions, etc. One way to obtain this information is by analyzing overhead images collected by satellites or drones, and extracting information from them through intelligent machine learning models. Thus, in this paper we propose and present a one-stage object detection model for finding vehicles in satellite images using the RetinaNet architecture and the Cars Overhead With Context dataset. By analyzing the results obtained by the proposed model, we show that it has a very good vehicle detection accuracy and a very low detection time, which shows that it can be employed to successfully extract data from real-time satellite or drone data.
为了改善大城市的交通状况,避免拥堵,需要先进的检测和预测车辆行为的方法。这些方法需要关于道路上车辆数量、位置、方向等的复杂信息。获取这些信息的一种方法是通过分析卫星或无人机收集的架空图像,并通过智能机器学习模型从中提取信息。因此,在本文中,我们提出并展示了一种基于 RetinaNet 架构和 Cars Overhead With Context 数据集的用于在卫星图像中查找车辆的单阶段目标检测模型。通过分析所提出模型的结果,我们表明它具有非常高的车辆检测精度和非常低的检测时间,这表明它可以成功地从实时卫星或无人机数据中提取数据。