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Comparison of techniques for radiometric identification based on deep convolutional neural networks

机译:基于深度卷积神经网络的辐射识别技术比较

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摘要

The authors investigate the application of deep convolutional neural networks (CNNs) to the problem of radiometric identification, i.e. the task of authenticating wireless devices on the basis of their radio frequency (RF) emissions, which contain features directly related to the physical properties of the wireless devices. They collected digitised RF from 12 wireless devices, and used various techniques to transform the time series derived from the RF to images. A deep CNN is then applied to the images. The authors' results show that the identification performance of the combination of deep CNN with an image representation significantly outperforms conventional methods based on dissimilarity on the original time series. Moreover, a specific comparison among RF-to-image techniques show that on their datasets the wavelet-based approach outperforms other approaches, also in the presence of white Gaussian noise.
机译:作者研究了深度卷积神经网络(CNN)在辐射识别问题上的应用,即基于无线设备的射频(RF)发射对无线设备进行身份验证的任务,该任务包含与无线设备的物理特性直接相关的特征无线设备。他们从12个无线设备中收集了数字化的RF,并使用各种技术将从RF导出的时间序列转换为图像。然后将深的CNN应用于图像。作者的结果表明,基于原始时间序列的相异性,将深层CNN与图像表示相结合的识别性能明显优于传统方法。此外,RF到图像技术之间的特定比较表明,在存在高斯白噪声的情况下,基于小波的方法在其数据集上的性能优于其他方法。

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