Litcius/Paper detail

Privacy-Preserving Distributed Kalman Filtering

Ashkan Moradi, Naveen K. D. Venkategowda, Sayed Pouria Talebi, Stefan Werner

2022IEEE Transactions on Signal Processing28 citationsDOIOpen Access PDF

Abstract

Distributed Kalman filtering techniques enable agents of a multiagent network to enhance their ability to track a system and learn from local cooperation with neighbors. Enabling this cooperation, however, requires agents to share information, which raises the question of privacy. This paper proposes a privacy-preserving distributed Kalman filter (PP-DKF) that protects local agent information by restricting and obfuscating the information exchanged. The derived PP-DKF embeds two state-of-the-art average consensus techniques that guarantee agent privacy. The resulting PP-DKF utilizes noise injection-based and decomposition-based privacy-preserving techniques to implement a robust distributed Kalman filtering solution against perturbation. We characterize the performance and convergence of the proposed PP-DKF and demonstrate its robustness against the injected noise variance. We also assess the privacy-preserving properties of the proposed algorithm for two types of adversaries, namely, an external eavesdropper and an honest-but-curious (HBC) agent, by providing bounds on the privacy leakage for both adversaries. Finally, several simulation examples illustrate that the proposed PP-DKF achieves better performance and higher privacy levels than the distributed Kalman filtering solutions employing contemporary privacy-preserving techniques.

Topics & Concepts

Computer scienceKalman filterRobustness (evolution)Convergence (economics)Noise (video)Information privacyDistributed computingComputer securityArtificial intelligenceEconomic growthGeneChemistryBiochemistryImage (mathematics)EconomicsDistributed Control Multi-Agent SystemsUAV Applications and OptimizationTarget Tracking and Data Fusion in Sensor Networks