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CNN-based UAV Detection with Short Time Fourier Transformed Acoustic Features

机译:基于CNN的具有短时傅立叶变换声特征的无人机检测

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In this study, CNN (Convolutional Neural Network) is applied to the UAV detection, which is expanding its application in various fields, to compare the detection performance of the UAV against the noise of a small fan and the drum. In this study, the drum sound and the small fan sound are collected and compared with the UAV's hovering acoustic signal data. We evaluate the detection performance by using CNN for the features obtained by applying short-time Fourier transform to the samples. In the experiment, the UAV detection rate against the acoustic signal of the small fan is 99.74 % and the false detection rate is 0.39 %. For the drum sound, the detection rate is 99.98 % and the false detection rate is 0.20 %.
机译:在这项研究中,CNN(卷积神经网络)被应用于无人机检测,它正在扩展其在各个领域的应用,以比较无人机在检测小风扇和鼓声时的检测性能。在这项研究中,收集了鼓声和小风扇声,并将其与无人机的悬停声信号数据进行比较。我们使用CNN评估通过对样本进行短时傅立叶变换而获得的特征的检测性能。在实验中,针对小风扇声信号的无人机检测率为99.74%,错误检测率为0.39%。对于鼓声,检测率为99.98%,错误检测率为0.20%。

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