Deep Learning Inspired Vision based Frameworks for Drone Detection

Muhammad Salman Kabir, Ikechi Ndukwe, Engr. Zainab Shahid Awan
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Abstract

Drone detection technology is a new frontier in defence systems. With increasing incidences of crimes and terroristic attacks using commercial drones, detection of unauthorized drones is critical for timely responses from law enforcement agencies. In this paper, the issues of unavailability of benchmark dataset and performance metrics for drone detection are addressed and three single shot detectors, based on YOLOv4, YOLOv5 and DETR architectures are presented. A maximum of 99% average precision (AP) with an average Intersection over Union (IOU) of 84% was achieved. The precision-recall curves corroborate the generalization and fitness of the trained detection models.
基于深度学习的无人机检测视觉框架
无人机探测技术是国防系统的一个新前沿。随着使用商用无人机的犯罪和恐怖袭击事件的增加,检测未经授权的无人机对于执法机构的及时反应至关重要。本文解决了无人机检测基准数据集和性能指标不可用的问题,并提出了基于YOLOv4、YOLOv5和DETR架构的三种单镜头探测器。最高可达99%的平均精度(AP),平均交联(IOU)为84%。查准率-查全率曲线证实了所训练的检测模型的泛化和适应度。
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