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Low-Cost Raspberry-Pi-Based UAS Detection and Classification System Using Machine Learning

机译:基于Raspberry-Pi的低成本UAS检测分类系统,基于机器学习

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Small Unmanned Aerial Systems (UAS) usage is undoubtedly increasing at a significant rate. However, alongside this expansion is a growing concern that dependable low-cost counter measures do not exist. To mitigate a threat in a restricted airspace, it must first be known that a threat is present. With airport disruption from malicious UASs occurring regularly, low-cost methods for early warning are essential. This paper considers a low-cost early warning system for UAS detection and classification consisting of a BladeRF software-defined radio (SDR), wideband antenna and a Raspberry Pi 4 producing an edge node with a cost of under USD 540. The experiments showed that the Raspberry Pi using TensorFlow is capable of running a CNN feature extractor and machine learning classifier as part of an early warning system for UASs. Inference times ranged from 15 to 28 s for two-class UAS detection and 18 to 28 s for UAS type classification, suggesting that for systems that require timely results the Raspberry Pi would be better suited to act as a repeater of the raw SDR data, enabling the processing to be carried out on a higher powered central control unit. However, an early warning system would likely fuse multiple sensors. These experiments showed the RF machine learning classifier capable of running on a low-cost Raspberry Pi 4, which produced overall accuracy for a two-class detection system at 100 and 90.9 for UAS type classification on the UASs tested. The contribution of this research is a starting point for the consideration of low-cost early warning systems for UAS classification using machine learning, an SDR and Raspberry Pi.
机译:小型无人机系统(UAS)的使用无疑正在以显着的速度增长。然而,随着这种扩张,人们越来越担心不存在可靠的低成本对策。为了减轻受限空域中的威胁,必须首先知道存在威胁。由于恶意无人机系统经常造成机场中断,因此低成本的预警方法至关重要。本文考虑了一种用于UAS检测和分类的低成本预警系统,该系统由BladeRF软件定义无线电(SDR)、宽带天线和Raspberry Pi 4组成,其边缘节点的成本低于540美元。实验表明,使用 TensorFlow 的 Raspberry Pi 能够运行 CNN 特征提取器和机器学习分类器,作为 UAS 预警系统的一部分。两类UAS检测的推理时间为15至28秒,UAS类型分类的推理时间为18至28秒,这表明对于需要及时结果的系统,Raspberry Pi更适合充当原始SDR数据的中继器,从而能够在更高功率的中央控制单元上进行处理。然而,预警系统可能会融合多个传感器。这些实验表明,射频机器学习分类器能够在低成本的Raspberry Pi 4上运行,在测试的UAS上,两类检测系统的整体准确率为100%,UAS类型分类的准确率为90.9%。这项研究的贡献是考虑使用机器学习、SDR 和 Raspberry Pi 进行 UAS 分类的低成本预警系统的起点。

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