Surveilling the Masses with Wi-Fi-Based Positioning Systems
May 23, 2024 Β· Declared Dead Β· π IEEE Symposium on Security and Privacy
"No code URL or promise found in abstract"
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Authors
Erik Rye, Dave Levin
arXiv ID
2405.14975
Category
cs.CR: Cryptography & Security
Cross-listed
cs.NI
Citations
5
Venue
IEEE Symposium on Security and Privacy
Last Checked
3 months ago
Abstract
Wi-Fi-based Positioning Systems (WPSes) are used by modern mobile devices to learn their position using nearby Wi-Fi access points as landmarks. In this work, we show that Apple's WPS can be abused to create a privacy threat on a global scale. We present an attack that allows an unprivileged attacker to amass a worldwide snapshot of Wi-Fi BSSID geolocations in only a matter of days. Our attack makes few assumptions, merely exploiting the fact that there are relatively few dense regions of allocated MAC address space. Applying this technique over the course of a year, we learned the precise locations of over 2 billion BSSIDs around the world. The privacy implications of such massive datasets become more stark when taken longitudinally, allowing the attacker to track devices' movements. While most Wi-Fi access points do not move for long periods of time, many devices -- like compact travel routers -- are specifically designed to be mobile. We present several case studies that demonstrate the types of attacks on privacy that Apple's WPS enables: We track devices moving in and out of war zones (specifically Ukraine and Gaza), the effects of natural disasters (specifically the fires in Maui), and the possibility of targeted individual tracking by proxy -- all by remotely geolocating wireless access points. We provide recommendations to WPS operators and Wi-Fi access point manufacturers to enhance the privacy of hundreds of millions of users worldwide. Finally, we detail our efforts at responsibly disclosing this privacy vulnerability, and outline some mitigations that Apple and Wi-Fi access point manufacturers have implemented both independently and as a result of our work.
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