Journal article

On privacy of dynamical systems: An optimal probabilistic mapping approach

C Murguia, I Shames, F Farokhi, D Nesic, HV Poor

IEEE Transactions on Information Forensics and Security | Published : 2021

Abstract

We address the problem of maximizing privacy of stochastic dynamical systems whose state information is released through quantized sensor data. In particular, we consider the setting where information about the system state is obtained using noisy sensor measurements. This data is quantized and transmitted to a (possibly untrustworthy) remote station through a public/unsecured communication network. We aim at keeping (part of) the state of the system private; however, because the network (and/or the remote station) might be unsecure, adversaries might have access to sensor data, which can be used to estimate the system state. To prevent such adversaries from obtaining an accurate state estim..

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Grants

Awarded by Australian Research Council


Funding Acknowledgements

This work was supported in part by the Australian Research Council (ARC) under Project DP170104099, in part by the NATO Science for Peace and Security (SPS) Programme under Project SPS.SFP G5479, in part by the Schmidt Data-X Grant from the Princeton Center for Statistics and Machine Learning, and in part by the U.S. National Science Foundation under Grant CCF-1908308. The associate editor coordinating the review of this manuscript and approving it for publication was Dr. Eduard A. Jorswieck.