School of Electronics Engineering, Kyungpook National University, Daegu 41566, Korea.
Hanwha Systems Corporation, Optronics Team, Gumi 39376, Korea.
Sensors (Basel). 2018 Nov 8;18(11):3825. doi: 10.3390/s18113825.
A common countermeasure to detect threatening drones is the electro-optical infrared (EO/IR) system. However, its performance is drastically reduced in conditions of complex background, saturation and light reflection. 3D laser sensor LiDAR is used to overcome the problems of 2D sensors like EO/IR, but it is not enough to detect small drones at a very long distance because of low laser energy and resolution. To solve this problem, A 3D LADAR sensor is under development. In this work, we study the detection methodology adequate to the LADAR sensor which can detect small drones at up to 2 km. First, a data augmentation method is proposed to generate a virtual target considering the laser beam and scanning characteristics, and to augment it with the actual LADAR sensor data for various kinds of tests before full hardware system developed. Second, a detection algorithm is proposed to detect drones using voxel-based background subtraction and variable radially bounded nearest neighbor (V-RBNN) method. The results show that 0.2 m L2 distance and 60% expected average overlap (EAO) indexes are satisfied for the required specification to detect 0.3 m size of small drones.
一种常见的探测威胁性无人机的对策是光电红外(EO/IR)系统。然而,在复杂背景、饱和和光反射等条件下,其性能会大幅下降。3D 激光传感器 LiDAR 可用于克服像 EO/IR 这样的 2D 传感器的问题,但由于激光能量和分辨率低,不足以在非常远的距离探测到小型无人机。为了解决这个问题,正在开发一种 3D LADAR 传感器。在这项工作中,我们研究了适用于 LADAR 传感器的检测方法,该传感器可以在 2 公里的范围内探测到小型无人机。首先,提出了一种数据增强方法,该方法考虑了激光束和扫描特性,生成了一个虚拟目标,并使用实际的 LADAR 传感器数据对各种测试进行了增强,然后再在完全开发硬件系统之前进行。其次,提出了一种基于体素的背景减除和可变径向有界最近邻(V-RBNN)方法的检测算法,用于检测无人机。结果表明,满足检测 0.3m 大小小型无人机所需规格的 0.2m L2 距离和 60%的期望平均重叠(EAO)指标。