Every Byte Matters: Traffic Analysis of Bluetooth Wearable Devices
Ludovic Barman, Alexandre Dumur, Apostolos Pyrgelis, Jean-Pierre, Hubaux

TL;DR
This paper demonstrates that passive traffic analysis of encrypted Bluetooth communications can reveal sensitive user actions, device identities, and habits, posing significant privacy risks for wearable device users.
Contribution
It introduces novel traffic-analysis attacks on Bluetooth wearables, showing that metadata leaks can compromise user privacy and that existing defenses are insufficient.
Findings
Traffic analysis can identify device types and user actions.
Standard defenses do not prevent traffic-analysis attacks.
Traffic patterns reveal user habits and sensitive health information.
Abstract
Wearable devices such as smartwatches, fitness trackers, and blood-pressure monitors process, store, and communicate sensitive and personal information related to the health, life-style, habits and interests of the wearer. This data is exchanged with a companion app running on a smartphone over a Bluetooth connection. In this work, we investigate what can be inferred from the metadata (such as the packet timings and sizes) of encrypted Bluetooth communications between a wearable device and its connected smartphone. We show that a passive eavesdropper can use traffic-analysis attacks to accurately recognize (a) communicating devices, even without having access to the MAC address, (b) human actions (e.g., monitoring heart rate, exercising) performed on wearable devices ranging from fitness trackers to smartwatches, (c) the mere opening of specific applications on a Wear OS smartwatch…
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