基于卷积深度信念网络的无线信号指纹提取

Weichen Zhao, Junshe An
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引用次数: 0

摘要

信号指纹是一种基于物理层的无线安全算法,用于识别合法设备。发射电路的非理想性将导致该电路发出的信号产生微小但独特的畸变。信号指纹的目的是从接收到的信号中提取出那些独特的失真,从而识别相关的射频电路和无线设备。传统的信号指纹提取依赖于精心设计的公式,其适用范围较窄,准确性无法保证。基于监督深度学习的信号指纹提取具有很高的准确性,可以应用于许多不同的环境。但是训练阶段需要大量的标记数据,这是一个很难满足的强烈要求。此外,网络可能对噪声很敏感。为了解决这些问题,本文提出了一种基于卷积深度信念网络(CDBN)的信号指纹提取算法。以信号的频谱作为输入,由网络自身进行信号指纹提取。从而提高了精度,扩大了应用范围。由于CDBN的无监督本质,减轻了标记数据的约束。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wireless Signal Fngerprint Extraction Based on Convolutional Deep Belief Network
Signal Fingerprint is a physical layer based wireless security algorithm desinged for recognizing legal devices. The non-ideality of transmitting circuit will lead to small but unique distortions in the signal emitted by this circuit. Signal fingerprint is aiming at extracting those unique distortions from received signal in order to identify the related radiofrequency circuit and wireless device. Traditional signal fingerprint extraction depends on carefully designed formula whose application scope is narrow and the accuracy cannot be guaranteed. Supervised deep learning based signal fingerprint extraction enjoys high accuracy and can be deployed in many different circumstances. But the large amount labeled data required in training stage is a strong requirement that cannot be easily met. Besides, the network might be sensitive to noise. To solve those problems, this paper proposes a Convolutional Deep Belief Network (CDBN) based signal fingerprint extraction algorithm. The signal fingerprint extraction is performed by network itself with the spectrum of signal as input. So the accuracy can be improved and application scope can be widen. Due to the unsupervised essence of CDBN, the constraint of labeled data is relieved.
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