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Amateur Drones Detection: A machine learning approach utilizing the acoustic signals in the presence of strong interference

机译:业余无人机检测:一种在强烈干扰下利用声学信号的机器学习方法

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摘要

Owing to small size, sensing capabilities and autonomous nature, the Unmanned Air Vehicles (UAVs) have enormous applications in various areas e.g., remote sensing, navigation, archaeology, journalism, environmental science, and agriculture. However, the un-monitored deployment of UAVs called the amateur drones (AmDr) can lead to serious security threats and risk to human life and infrastructure. Therefore, timely detection of the AmDr is essential for the protection and security of sensitive organizations, human life and other vital infrastructure. AmDrs can be detected using different techniques based on sound, video, thermal, and radio frequencies. However, the performance of these techniques is limited in sever atmospheric conditions. In this paper, we propose an efficient un-supervise machine learning approach of independent component analysis (ICA) to detect various acoustic signals i.e., sounds of bird, airplanes, thunderstorm, rain, wind and the UAVs in practical scenario. After unmixing the signals, the features like Mel Frequency Cepstral Coefficients (MFCC), the power spectral density (PSD) and the Root Mean Square Value (RMS) of the PSD are extracted by using ICA. The PSD and the RMS of PSD signals are extracted by first passing the signals from octave band filter banks. Based on the above features the signals are classified using Support Vector Machines (SVM)and K Nearest Neighbour (KNN)to detect the presence or absence of AmDr. Unique feature of the proposed technique is the detection of a single or multiple AmDrs at a time in the presence of multiple acoustic interfering signals. The proposed technique is verified through extensive simulations and it is observed that the RMS values of PSD with KNN performs better than the MFCC with KNN and SVM.
机译:由于体积小,感测能力强和具有自主性,因此无人飞行器(UAV)在遥感,导航,考古,新闻,环境科学和农业等各个领域都有着巨大的应用。但是,被称为业余无人机(AmDr)的无人机的不受监控的部署可能导致严重的安全威胁,并威胁到人类生命和基础设施。因此,及时检测AmDr对于保护敏感组织,人类生命和其他重要基础设施的安全至关重要。可以使用基于声音,视频,热和无线电频率的不同技术来检测AmDrs。但是,这些技术的性能在严重的大气条件下受到限制。在本文中,我们提出了一种有效的独立组件分析(ICA)的无监督机器学习方法,可以在实际情况下检测各种声音信号,例如鸟声,飞机声,雷暴雨,雨声,风声和无人机。解开信号后,使用ICA提取诸如梅尔频率倒谱系数(MFCC),功率谱密度(PSD)和均方根值(RMS)之类的特征。 PSD和RMS信号的RMS是通过首先使倍频带滤波器组中的信号通过而提取的。基于以上特征,使用支持向量机(SVM)和K最近邻(KNN)对信号进行分类,以检测是否存在AmDr。所提出的技术的独特特征是在存在多个声干扰信号的情况下一次检测单个或多个AmDr。通过广泛的仿真验证了所提出的技术,并且观察到,带有KNN的PSD的RMS值比带有KNN和SVM的MFCC更好。

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