You Can Run, But You Cannot Hide: Using Elevation Profiles to Breach Location Privacy through Trajectory Prediction
\"Ulk\"u Meteriz, Necip Faz{\i}l Y{\i}ld{\i}ran, Aziz Mohaisen

TL;DR
This paper demonstrates that elevation profiles shared on fitness platforms can be exploited to accurately predict user trajectories, revealing significant privacy risks through novel NLP and computer vision methods.
Contribution
It introduces threat models and innovative text/image representations of elevation data, showing high success rates in trajectory prediction using machine learning and deep learning.
Findings
Prediction success rates range from 59.59% to 95.83%.
Elevation profiles can leak detailed location information.
Proposed methods outperform simple spectral features.
Abstract
The extensive use of smartphones and wearable devices has facilitated many useful applications. For example, with Global Positioning System (GPS)-equipped smart and wearable devices, many applications can gather, process, and share rich metadata, such as geolocation, trajectories, elevation, and time. For example, fitness applications, such as Strava and Runkeeper, utilize information for activity tracking, and have recently witnessed a boom in popularity. Those trackers have their own web platforms, and allow users to share activities on such platforms, or even with other social network platforms. To preserve privacy of users while allowing sharing, those platforms allow users to disclose partial information, such as the elevation profile for an activity, which supposedly will not leak the location trajectory. In this work we examine the extent to which publicly available elevation…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Data-Driven Disease Surveillance · Privacy, Security, and Data Protection
