Personal data garnered from various sensors are often offloaded by applications to the cloud for analytics. This leads to a potential risk of disclosing private user information. We observe that the analytics run on the cloud are often limited to a machine learning model such as predicting a user’s activity using an activity classifier. We present O lympus , a privacy framework that limits the risk of disclosing private user information by obfuscating sensor data while minimally affecting the functionality the data are intended for. O lympus achieves privacy by designing a utility aware obfuscation mechanism, where privacy and utility requirements are modeled as adversarial networks. By rigorous and comprehensive evaluation on a real world app and on benchmark datasets, we show that O lympus successfully limits the disclosure of private information without significantly affecting functionality of the application.
CITATION STYLE
Raval, N., Machanavajjhala, A., & Pan, J. (2019). Olympus: Sensor Privacy through Utility Aware Obfuscation. Proceedings on Privacy Enhancing Technologies, 2019(1), 5–25. https://doi.org/10.2478/popets-2019-0002
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