Detection and Tracking of UAV Targets Using Deep Learning

Mohamed Khedir Noraldain Alamin
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引用次数: 2

Abstract

In recent years, the use of Flying drones and modern Unmanned aerial vehicles (UAVs) with the latest techniques and capabilities for both civilian and military applications growing sustainably on a large scope, Drones could autonomously fly in several environments and locations and could perform various missions, providing a system for UAV detection and tracking represent crucial importance. This paper discusses Designing Detection and Tracking method as a part of Aero-vehicle Defense System (ADS) for UAVs using Deep learning algorithms. The small Radar cross-section (RCS) foot-print makes a problem for Traditional methods and Aero-vehicle Defense systems to distinguish between birds, stealth fighters, and UAVs incomparable of size and RCS characteristics, the detection is a challenge in low RCS targets because the chance of detection is incredibly less moreover, in the existence of interference and clutter which reduce the performance of detection process rapidly. 
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基于深度学习的无人机目标检测与跟踪
近年来,无人机和现代无人机(UAV)在民用和军事应用方面的最新技术和能力的使用在大范围内持续增长,无人机可以在多个环境和地点自主飞行,并可以执行各种任务,为无人机检测和跟踪提供系统至关重要。本文讨论了利用深度学习算法设计无人机机载防御系统(ADS)的检测与跟踪方法。小的雷达截面积(RCS)使得传统方法和飞行器防御系统难以区分鸟类、隐身战斗机和无人机,而在低RCS目标下,由于干扰和杂波的存在,检测的机会非常少,从而使检测过程的性能迅速降低,因此对低RCS目标的检测是一个挑战。
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