基于深度神经网络的无人机装卸检测

U. Seidaliyeva, Manal Alduraibi, L. Ilipbayeva, A. Almagambetov
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引用次数: 25

摘要

无人驾驶飞行器或无人机迅速变得更便宜,变得更先进,对普通大众来说也负担得起。而且由于易于控制,它们在那些想要运送各种可疑物品的人中间很受欢迎。无人机探测可以通过不同的现有技术执行,例如雷达、射频、声学和光学传感技术。由于低成本和低功耗技术,计算机视觉被认为是一种有效的检测无人机的方法。以往的无人机检测研究多是针对无人机存在性的检测。本文的主要目的是综述近年来无人机检测的研究进展,并基于YOLOv2进行单级加载和卸载无人机检测
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of loaded and unloaded UAV using deep neural network
Unmanned aerial vehicles or drones quickly became cheaper, becoming more advanced and affordable to the general public. And the ease of control made them popular among people, who want to deliver various suspicious loads. UAV detection can be performed by different existing techniques, such as radar, radio frequency, acoustic and optical sensing techniques. Because of low-cost and low-power technology computer vision is considered as an effective method for detecting Unmanned aerial vehicles. Previous studies of UAV detection mostly have dealt with detection of UAV existence. The primary aim of this paper is to review recent research into the UAV detection and perform single stage loaded and unloaded UAV detection based on YOLOv2
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