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首页> 外文期刊>Applied System Innovation >Automated Detection of Multi-Rotor UAVs Using a Machine-Learning Approach
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Automated Detection of Multi-Rotor UAVs Using a Machine-Learning Approach

机译:使用机器学习方法自动检测多转子无人机

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The objective of this article is to propose and verify a reliable detection mechanism of multi-rotor unmanned aerial vehicles (UAVs). Such a task needs to be solved in many areas such as in the protection of vulnerable buildings or in the protection of privacy. Our system was firstly realized by standard computer vision methods using the Oriented FAST and Rotated BRIEF (ORB) feature detector. Due to the low success rate achieved in real-world conditions, the machine-learning approach was used as an alternative detection mechanism. The “Common Objects in Context dataset” was used as a predefined dataset and it was extended by 1000 samples of UAVs from the SafeShore dataset. The effectiveness and the reliability of our system are proven by four basic experiments—drone in a static image and videos which are displaying a drone in the sky, multiple drones in one image, and a drone with another flying object in the sky. The successful detection rate achieved was 97.3% in optimal conditions.
机译:本文的目的是提出并验证多转子无人机(UAV)的可靠检测机制。需要在许多领域解决这样的任务,例如保护弱势建筑物或保护隐私。我们的系统首先通过标准计算机视觉方法实现了使用定向的快速和旋转简短(ORB)特征检测器。由于在现实世界的情况下实现的低成功率,机器学习方法被用作替代检测机制。 “上下文数据集中的常见对象”用作预定义的数据集,它已从SaveShore数据集中扩展了1000个样本。在静态图像和视频中,我们系统的有效性和可靠性被证明是在天空中显示无人机的静态图像和视频,以及一个图像中的多个无人机,以及天空中的另一个飞行物体的无人机。达到的成功检测率在最佳条件下为97.3%。

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