Conference Proceedings
On Privacy of Quantized Sensor Measurements through Additive Noise
Carlos Murguia, Iman Shames, Farhad Farokhi, Dragan Nesic
Proceedings of the ... IEEE Conference on Decision & Control / IEEE Control Systems Society. IEEE Conference on Decision & Control | IEEE | Published : 2018
Abstract
We study the problem of maximizing privacy of quantized sensor measurements by adding random variables. In particular, we consider the setting where information about the state of a process is obtained using noisy sensor measurements. This information is quantized and sent to a remote station through an unsecured communication network. It is desired to keep the state of the process private; however, because the network is not secure, adversaries might have access to sensor information, which could be used to estimate the process state. To avoid an accurate state estimation, we add random numbers to the quantized sensor measurements and send the sum to the remote station instead. The distribu..
View full abstractGrants
Awarded by Australian Research Council (ARC)
Funding Acknowledgements
This work was partially supported by the Australian Research Council (ARC) under the Discovery Project DP170104099.