We are concerned with a privacy-preserving problem in Kalman filter: a sensor releases a set of measurements to fusion center, who has perfect knowledge of the dynamical model, to allow it to estimate the public state, while prevent it from estimating the private state. We propose to linearly transform the original observation into a lower dimensional space before sending them to fusion center. Two privacy-utility tradeoffs are formulated: one concerns only at the current time step and the other concerns over two time steps. The transformation that leads to the optimal tradeoff can be found in closed-form. The privacy (estimation of private state) and utility (estimation of public state) are measured based on recursive Bayesian Cramér-Rao b...
We address the problem of maximizing privacy of stochastic dynamical systems whose state information...
We address the problem of maximizing privacy of stochastic dynamical systems whose state information...
Cognitive computing works well based on volumes of data, which offers the guarantee of unlocking nov...
We are concerned with a privacy-preserving problem in Kalman filter: a sensor releases a set of meas...
Abstract — This paper studies the H2 (Kalman) filtering problem in the situation where a signal esti...
Distributed filtering techniques have emerged as the dominant and most prolific class of filters use...
In the activities of data sharing and decentralized processing, data belonging to a user need to be ...
Emerging systems such as smart grids or intelligent transportation systems often require end-user ap...
We address the problem of maximizing privacy of stochastic dynamical systems whose state information...
We address the problem of maximizing privacy of stochastic dynamical systems whose state information...
We address the problem of maximizing privacy of stochastic dynamical systems whose state information...
We address the problem of maximizing privacy of stochastic dynamical systems whose state information...
We address the problem of maximizing privacy of stochastic dynamical systems whose state information...
Information about the system state is obtained through noisy sensor measurements. This data is coded...
Information about the system state is obtained through noisy sensor measurements. This data is coded...
We address the problem of maximizing privacy of stochastic dynamical systems whose state information...
We address the problem of maximizing privacy of stochastic dynamical systems whose state information...
Cognitive computing works well based on volumes of data, which offers the guarantee of unlocking nov...
We are concerned with a privacy-preserving problem in Kalman filter: a sensor releases a set of meas...
Abstract — This paper studies the H2 (Kalman) filtering problem in the situation where a signal esti...
Distributed filtering techniques have emerged as the dominant and most prolific class of filters use...
In the activities of data sharing and decentralized processing, data belonging to a user need to be ...
Emerging systems such as smart grids or intelligent transportation systems often require end-user ap...
We address the problem of maximizing privacy of stochastic dynamical systems whose state information...
We address the problem of maximizing privacy of stochastic dynamical systems whose state information...
We address the problem of maximizing privacy of stochastic dynamical systems whose state information...
We address the problem of maximizing privacy of stochastic dynamical systems whose state information...
We address the problem of maximizing privacy of stochastic dynamical systems whose state information...
Information about the system state is obtained through noisy sensor measurements. This data is coded...
Information about the system state is obtained through noisy sensor measurements. This data is coded...
We address the problem of maximizing privacy of stochastic dynamical systems whose state information...
We address the problem of maximizing privacy of stochastic dynamical systems whose state information...
Cognitive computing works well based on volumes of data, which offers the guarantee of unlocking nov...