基于YOLOv4的无人机探测与测距

Jian Li, Haibin Liu, Wentao Zhang, Lu Li, Wenyue Wang
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引用次数: 0

摘要

无人机的快速发展给各个应用领域带来了极大的便利。与此同时,它的广泛利用也带来了公共安全隐患、人身安全威胁、侵犯个人隐私等诸多问题。无人机由于其规模小、飞行环境复杂,给实时捕获带来困难。为了从安全防护的角度解决上述问题,本文提出了一种基于深度学习的低成本无人机检测、距离测量和防护方案。研究不同损失函数和阈值对YOLOv4检测精度的影响,提高YOLOv4对无人机的检测性能。同时,为了实现对无人机更有效的防控,引入了基于PnP的单目测距方法来获取摄像机与无人机之间的距离。最后,将研究结果应用于实际场景,取得了良好的目标检测和测距效果,验证了所提模型的可行性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The UAV Detection and Ranging Based on YOLOv4
The rapid development of UAV has brought great convenience to various application fields. In the meanwhile, its extensive utilization has also resulted in many problems such as public safety hazards, personal security threats and personal privacy violations. UAV is difficult to capture in real-time because of its small scale and complex flight environment. In order to solve the above problems from the perspective of security protection, a low-cost UAV detection, distance measure and protection scheme are proposed based on deep learning in this paper. The influences of different loss functions and thresholds are studied on the detection accuracy of YOLOv4 to improve the detection performance of YOLOv4 on UAV. At the same time, in order to achieve more effective prevention and control of UAV, the monocular ranging method based on PnP is introduced to get the distance between camera and UAV. Finally, the study is applied in the real-world scene, and a good target detection and ranging effect have been achieved so that the proposed model is verified in the feasibility and effectiveness.
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