Journal article
Privacy Against State Estimation: An Optimization Framework based on the Data Processing Inequality
Carlos Murguia, Iman Shames, Farhad Farokhi, Dragan Nesic
IFAC PAPERSONLINE | ELSEVIER | Published : 2020
Abstract
Information about the system state is obtained through noisy sensor measurements. This data is coded and transmitted to a trusted user through an unsecured communication network. We aim at keeping the system state private; however, because the network is not secure, opponents might access sensor data, which can be used to estimate the state. To prevent this, before transmission, we randomize coded sensor data by passing it through a probabilistic mapping, and send the corrupted data to the trusted user. Making use of the data processing inequality, we cast the synthesis of the probabilistic mapping as a convex program where we minimize the mutual information (our privacy metric) between two ..
View full abstractGrants
Awarded by Australian Research Council (ARC)
Awarded by NATO Science for Peace and Security (SPS) PROGRAMME
Funding Acknowledgements
This work was supported by the Australian Research Council (ARC) under the Project DP170104099; and the NATO Science for Peace and Security (SPS) PROGRAMME under the project SPS.SFP G5479.