Deep Learning Based UAV Payload Recognition

L. Sommer, Raphael Spraul
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Abstract

Due to the increased availability of unmanned aerial vehicles (UAVs), the demand for automated counter-UAV systems to protect facilities or areas from misused or threatening UAVs is growing. Fundamental for these systems are fast and accurate detection as well as identification of potential threats to initiate countermeasures. Criteria to classify the potential threat are UAV type and payload. Though thermal or electro optical (EO) imagery have been widely applied for the detection task, other sensor modalities, i.e. acoustic, radar and radio frequency, are predominately used for UAV type and payload classification. In this work, we examine the potential of UAV payload classification in EO imagery, which facilitates direct interpretability by human operators. For this, we compare conventional CNN-based architectures and recent architectures exploiting self-attention mechanisms such as Vision Transformers. The different architectures are trained and evaluated on a novel dataset composed of own recordings of UAVs with and without payload, imagery crawled from the Internet and imagery taken from publicly available UAV datasets.
基于深度学习的无人机有效载荷识别
由于无人机的可用性增加,对自动化反无人机系统的需求正在增长,以保护设施或区域免受滥用或威胁的无人机。这些系统的基础是快速和准确的检测以及识别潜在威胁以启动对策。对潜在威胁进行分类的标准是无人机类型和有效载荷。虽然热或光电(EO)图像已广泛应用于探测任务,其他传感器模式,即声学,雷达和射频,主要用于无人机类型和有效载荷分类。在这项工作中,我们研究了无人机有效载荷分类在EO图像中的潜力,这有助于人类操作员的直接可解释性。为此,我们比较了传统的基于cnn的架构和最近利用自关注机制(如Vision Transformers)的架构。不同的架构在一个新的数据集上进行训练和评估,该数据集由自己的无人机记录和没有有效载荷、从互联网上抓取的图像和从公开可用的无人机数据集中获取的图像组成。
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