Real-time vehicle detection for traffic monitoring by applying a deep learning algorithm over images acquired from satellite and drone

IF 0.8 Q4 ROBOTICS
D. Vohra, P. Garg, S. Ghosh
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引用次数: 1

Abstract

PurposeThe purpose is to design a system in which drones can control traffic most effectively using a deep learning algorithm.Design/methodology/approachDrones have now started entry into each facet of life. The entry of drones has made them a subject of great relevance in the present technological era. The span of drones is, however, very broad due to various kinds of usages leading to different types of drones. Out of the many usages, one usage which is presently being widely researched is traffic monitoring as traffic monitoring can hover over a particular area. This paper specifically brings out the basic algorithm You Look Only Once (YOLO) which may be used for identifying the vehicles. Consequently, using deep learning YOLO algorithm, identification of vehicles will, therefore, help in easy regulation of traffic in streetlights, avoiding accidents, finding out the culprit drivers due to which traffic jam would have taken place and recognition of a pattern of traffic at various timings of the day, thereby announcing the same through radio (namely, Frequency Modulation (FM)) channels, so that people can take the route which is the least jammed.FindingsThe study found that the object(s) detected by the deep learning algorithm is almost the same as if seen from a naked eye from the top view. This led to the conclusion that the drones may be used for traffic monitoring, in the days to come, which was not the case earlier.Originality/valueThe main research content and key algorithm have been introduced. The research is original. None of the parts of this research paper has been published anywhere.
通过对卫星和无人机获取的图像应用深度学习算法进行交通监控的实时车辆检测
目的是设计一个系统,在这个系统中,无人机可以使用深度学习算法最有效地控制交通。设计/方法论/方法无人机现在已经开始进入生活的各个方面。无人机的进入使其成为当今科技时代的一个重要主题。然而,由于各种用途导致不同类型的无人机,无人机的范围非常广泛。在众多用途中,目前正在广泛研究的一种用途是交通监控,因为交通监控可以在特定区域上空盘旋。本文具体提出了可用于车辆识别的You Look Only Once (YOLO)基本算法。因此,使用深度学习YOLO算法,车辆识别将有助于轻松调节路灯交通,避免事故,找出导致交通拥堵的罪魁祸首司机,并识别一天中不同时间的交通模式,从而通过无线电(即调频(FM))频道宣布相同的情况,以便人们可以选择拥堵最少的路线。研究结果发现,深度学习算法检测到的物体与肉眼从俯视图看到的物体几乎相同。由此得出的结论是,在未来的日子里,无人机可能会被用于交通监控,而此前的情况并非如此。介绍了主要研究内容和关键算法。这项研究是原创的。这篇研究论文的任何部分都没有发表过。
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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来源期刊
CiteScore
3.50
自引率
0.00%
发文量
21
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