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Robust drone detection for dayight counter-UAV with static VIS and SWIR cameras

机译:使用静态VIS和SWIR摄像机对昼夜反无人机进行可靠的无人机检测

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Recent progress in the development of unmanned aerial vehicles (UAVs) has led to more and more situations in which drones like quadrocopters or octocopters pose a potential serious thread or could be used as a powerful tool for illegal activities. Therefore, counter-UAV systems are required in a lot of applications to detect approaching drones as early as possible. In this paper, an efficient and robust algorithm is presented for UAV detection using static VIS and SWIR cameras. Whereas VIS cameras with a high resolution enable to detect UAVs in the daytime in further distances, surveillance at night can be performed with a SWIR camera. First, a background estimation and structural adaptive change detection process detects movements and other changes in the observed scene. Afterwards, the local density of changes is computed used for background density learning and to build up the foreground model which are compared in order to finally get the UAV alarm result. The density model is used to filter out noise effects, on the one hand. On the other hand, moving scene parts like moving leaves in the wind or driving cars on a street can easily be learned in order to mask such areas out and suppress false alarms there. This scene learning is done automatically simply by processing without UAVs in order to capture the normal situation. The given results document the performance of the presented approach in VIS and SWIR in different situations.
机译:无人飞行器(UAV)的最新发展导致越来越多的情况,像四轴飞行器或八轴飞行器这样的无人机可能构成严重的威胁,或者可以用作进行非法活动的有力工具。因此,在许多应用中都需要使用反无人机系统来尽早检测无人机。在本文中,提出了一种有效且鲁棒的算法,用于使用静态VIS和SWIR摄像机进行无人机检测。高分辨率的VIS摄像机可以在更远的白天检测到无人机,而夜间可以使用SWIR摄像机进行监视。首先,背景估计和结构自适应变化检测过程会检测观察到的场景中的运动和其他变化。然后,计算变化的局部密度,用于背景密度学习和建立前景模型,将其进行比较,以最终获得无人机报警结果。一方面,密度模型用于滤除噪声影响。另一方面,可以很容易地学习到移动的场景部分,例如风中飘动的树叶或街道上的驾驶汽车,以便将这些区域遮盖起来并抑制那里的误报。该场景学习是简单地通过不使用无人机进行处理即可自动完成的,以捕获正常情况。给出的结果证明了所提出的方法在不同情况下在VIS和SWIR中的性能。

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