Centre for Research and Technology Hellas, Information Technologies Institute, 6th km Charilaou-Thermi, 57001 Thermi, Greece.
University of Nicosia, Makedonitissis 46, 2417 Nicosia, Cyprus.
Sensors (Basel). 2019 Nov 6;19(22):4837. doi: 10.3390/s19224837.
Usage of Unmanned Aerial Vehicles (UAVs) is growing rapidly in a wide range of consumer applications, as they prove to be both autonomous and flexible in a variety of environments and tasks. However, this versatility and ease of use also brings a rapid evolution of threats by malicious actors that can use UAVs for criminal activities, converting them to passive or active threats. The need to protect critical infrastructures and important events from such threats has brought advances in counter UAV (c-UAV) applications. Nowadays, c-UAV applications offer systems that comprise a multi-sensory arsenal often including electro-optical, thermal, acoustic, radar and radio frequency sensors, whose information can be fused to increase the confidence of threat's identification. Nevertheless, real-time surveillance is a cumbersome process, but it is absolutely essential to detect promptly the occurrence of adverse events or conditions. To that end, many challenging tasks arise such as object detection, classification, multi-object tracking and multi-sensor information fusion. In recent years, researchers have utilized deep learning based methodologies to tackle these tasks for generic objects and made noteworthy progress, yet applying deep learning for UAV detection and classification is considered a novel concept. Therefore, the need to present a complete overview of deep learning technologies applied to c-UAV related tasks on multi-sensor data has emerged. The aim of this paper is to describe deep learning advances on c-UAV related tasks when applied to data originating from many different sensors as well as multi-sensor information fusion. This survey may help in making recommendations and improvements of c-UAV applications for the future.
无人驾驶飞行器 (UAV) 在各种消费应用中的使用正在迅速增长,因为它们在各种环境和任务中证明了自身的自主性和灵活性。然而,这种多功能性和易用性也带来了恶意行为者威胁的快速演变,他们可以利用无人机进行犯罪活动,将其转化为被动或主动威胁。保护关键基础设施和重要活动免受此类威胁的需要,推动了反无人机 (c-UAV) 应用的发展。如今,c-UAV 应用提供了包含光电、热、声、雷达和射频传感器的多传感器武器库系统,其信息可以融合以提高威胁识别的置信度。然而,实时监控是一个繁琐的过程,但及时检测到不利事件或情况的发生是绝对必要的。为此,出现了许多具有挑战性的任务,如目标检测、分类、多目标跟踪和多传感器信息融合。近年来,研究人员已经利用基于深度学习的方法来解决这些通用物体的任务,并取得了显著的进展,然而,将深度学习应用于无人机检测和分类被认为是一个新概念。因此,需要对应用于多传感器数据的 c-UAV 相关任务的深度学习技术进行全面概述。本文的目的是描述应用于源自多个不同传感器的多传感器信息融合的数据的 c-UAV 相关任务的深度学习进展。该调查可能有助于为未来的 c-UAV 应用提供建议和改进。