低分辨率无人机检测的递归运动神经网络

Hamish Pratt, B. Evans, T. Rowntree, I. Reid, S. Wiederman
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引用次数: 0

摘要

无人机在日常使用中越来越普遍,在建筑工作和农业测量等领域有许多商业应用。尽管无人机有常见的商业用途,但最近也有恶意使用,比如盖特威克机场(Gatwick Airport)的航班中断。随着公众和其他空域用户安全问题的出现,探测和监控一个地区的活跃无人机至关重要。介绍了一种专门用于无人机检测的递归卷积神经网络(CNN)。该CNN利用飞行中无人机的时间信息,从下采样图像中检测无人机,优于最先进的传统目标检测器。由于该网络的轻量级和低分辨率特性,它可以安装在小型处理器上并以接近实时的速度运行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recurrent Motion Neural Network for Low Resolution Drone Detection
Drones are becoming increasingly prevalent in everyday usage with many commercial applications in fields such as construction work and agricultural surveying. Despite their common commercial use, drones have been recently used with malicious intent, such as airline disruptions at Gatwick Airport. With the emerging issue of safety concerns for the public and other airspace users, detecting and monitoring active drones in an area is crucial. This paper introduces a recurrent convolutional neural network (CNN) specifically designed for drone detection. This CNN can detect drones from down-sampled images by exploiting the temporal information of drones in flight and outperforms a state-of-the-art conventional object detector. Due to the lightweight and low resolution nature of this network, it can be mounted on a small processor and run at near real-time speeds.
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