Using TLS Fingerprints for OS Identification in Encrypted Traffic.

NOMS(2020)

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摘要
Asset identification plays a vital role in situational awareness building. However, the current trends in communication encryption and the emerging new protocols turn the well-known methods into a decline as they lose the necessary data to work correctly. In this paper, we examine the traffic patterns of the TLS protocol and its changes introduced in version 1.3. We train a machine learning model on TLS handshake parameters to identify the operating system of the client device and compare its results to well-known identification methods. We test the proposed method in a large wireless network. Our results show that precise operating system identification can be achieved in encrypted traffic of mobile devices and notebooks connected to the wireless network.
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关键词
TLS fingerprints,OS identification,traffic encryption,asset identification,situational awareness building,traffic patterns,TLS protocol,machine learning model,TLS handshake parameters,client device,wireless network,transport layer security,mobile devices
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