MAC ID Spoofing-Resistant Radio Fingerprinting

2019 IEEE Global Conference on Signal and Information Processing (GlobalSIP)(2019)

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摘要
We explore the resistance of deep learning methods for radio fingerprinting to MAC ID spoofing. We demonstrate that classifying transmission slices enables classification of a transmission with a fixed-length input deep classifier, enhances shift-invariance, and, most importantly, makes the classifier resistant to MAC ID spoofing. This is a consequence of the fact that the classifier does not learn to use the MAC ID to classifying among transmissions, but relies on other inherent discriminating signals, e.g., device imperfections. We demonstrate this via experiments on transmissions generated using two protocols, namely, WiFi and ADS-B.
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关键词
MAC ID spoofing-resistant radio fingerprinting,deep learning methods,fixed-length input deep classifier,transmission slices,WiFi protocol,ADS-B protocol
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