DYSAN: Dynamically sanitizing motion sensor data against sensitive inferences through adversarial networks
Claude Rosin Ngueveu (UQAM), Antoine Boutet (PRIVATICS), Carole, Frindel (CREATIS), S\'ebastien Gambs (UQAM), Th\'eo Jourdan (CREATIS,, PRIVATICS), Claude Rosin

TL;DR
DySan uses adversarial networks to sanitize motion sensor data, significantly reducing sensitive attribute inference while preserving activity recognition accuracy, thus enhancing user privacy in mobile health applications.
Contribution
Introduces DySan, a GAN-based framework that dynamically sanitizes sensor data to protect privacy without substantially sacrificing data utility.
Findings
Reduces gender inference accuracy by 53%.
Maintains activity recognition accuracy within 3%.
Demonstrates effectiveness on real datasets.
Abstract
With the widespread adoption of the quantified self movement, an increasing number of users rely on mobile applications to monitor their physical activity through their smartphones. Granting to applications a direct access to sensor data expose users to privacy risks. Indeed, usually these motion sensor data are transmitted to analytics applications hosted on the cloud leveraging machine learning models to provide feedback on their health to users. However, nothing prevents the service provider to infer private and sensitive information about a user such as health or demographic attributes.In this paper, we present DySan, a privacy-preserving framework to sanitize motion sensor data against unwanted sensitive inferences (i.e., improving privacy) while limiting the loss of accuracy on the physical activity monitoring (i.e., maintaining data utility). To ensure a good trade-off between…
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Taxonomy
TopicsContext-Aware Activity Recognition Systems · IoT and Edge/Fog Computing · Privacy-Preserving Technologies in Data
