Automatic detection of flying drones is a key issue where its presence, specially if unauthorized, can create risky situations or compromise security. Here, we design and evaluate a multi-sensor drone detection system. In conjunction with common video cameras and microphone sensors, we explore the use of thermal infrared cameras, pointed out as a feasible and promising solution that is scarcely addressed in the related literature. Our solution integrates a fish-eye camera as well to monitor a wider part of the sky and steer the other cameras towards objects of interest. The sensing solutions are complemented with an ADS-B receiver, a GPS receiver, and a radar module, although the latter has been not included in our final deployment due to its limited detection range. The thermal camera is shown to be a feasible solution as good as the video camera, even if the camera employed here has a lower resolution. Two other novelties of our work are the creation of a new public dataset of multi-sensor annotated data that expand the number of classes in comparison to existing ones, as well as the study of the detector performance as a function of the sensor-to-target distance. Sensor fusion is also explored, showing that the system can be made more robust in this way, mitigating false detections of the individual sensors
翻译:飞行无人机的自动探测是一个关键问题,其存在,特别是未经授权的飞行无人机,可能会造成危险局面或危及安全。在这里,我们设计和评价一个多传感器无人机探测系统。我们与普通摄像头和麦克风传感器一起,探索使用热红外摄像头,指出这是一个可行和有希望的解决办法,相关文献很少涉及。我们的解决方案将鱼眼摄像头结合起来,并监测更广大的天空,将其他摄像头引导到感兴趣的物体上。遥感解决方案得到了一个ADS-B接收器、全球定位系统接收器和雷达模块的补充,尽管后者由于探测范围有限而没有包括在我们的最后部署中。热相机被证明是像摄像机一样可行的解决办法,即使这里使用的相机分辨率较低。我们工作的另外两个新颖之处是创建一个新的多传感器公共数据集,将增加与现有传感器相比的班级数,以及将探测器的性能作为传感器到目标距离的功能进行研究。传感器感应进行更精确的感应感测,并显示系统能够以更稳健的方式进行系统减缓。