CRSep 27, 2018

Identification of Wearable Devices with Bluetooth

arXiv:1809.10387v249 citations
Originality Synthesis-oriented
AI Analysis

This addresses security vulnerabilities in consumer wearables, but it is incremental as it applies existing machine learning methods to a new domain.

The paper tackled the problem of securing wearable devices by introducing a non-intrusive fingerprinting technique using Bluetooth classic protocol to identify devices, achieving average accuracy of 98.5% and precision/recall of 98.3% on real smartwatches.

With wearable devices such as smartwatches on the rise in the consumer electronics market, securing these wearables is vital. However, the current security mechanisms only focus on validating the user not the device itself. Indeed, wearables can be (1) unauthorized wearable devices with correct credentials accessing valuable systems and networks, (2) passive insiders or outsider wearable devices, or (3) information-leaking wearables devices. Fingerprinting via machine learning can provide necessary cyber threat intelligence to address all these cyber attacks. In this work, we introduce a wearable fingerprinting technique focusing on Bluetooth classic protocol, which is a common protocol used by the wearables and other IoT devices. Specifically, we propose a non-intrusive wearable device identification framework which utilizes 20 different Machine Learning (ML) algorithms in the training phase of the classification process and selects the best performing algorithm for the testing phase. Furthermore, we evaluate the performance of proposed wearable fingerprinting technique on real wearable devices, including various off-the-shelf smartwatches. Our evaluation demonstrates the feasibility of the proposed technique to provide reliable cyber threat intelligence. Specifically, our detailed accuracy results show on average 98.5%, 98.3% precision and recall for identifying wearables using the Bluetooth classic protocol.

Foundations

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