Lure-and-Reveal: An Exposure Framework for Stealthy Deception Attack in Multi-sensor Uncertain Systems
Meiqi Tian, Yihan Liu, Bingzhuo Zhong

TL;DR
This paper introduces an active exposure framework that injects random control input shakes to reveal stealthy deception attacks in multi-sensor systems without altering sensor interfaces.
Contribution
It proposes a novel active detection method using random exposure shakes and derives conditions for guaranteed attack exposure and performance preservation.
Findings
Simulation on UAV system confirms effectiveness
Explicit exposure condition derived for minimum shake magnitude
Framework prevents stealthy attacks without modifying sensors
Abstract
Multi-sensor integration via error-state Kalman filter (KF) is widely employed for precise state estimation in cyber-physical systems (CPSs). However, this integration exposes the system to stealthy deception attacks that render conventional detection mechanisms ineffective. We propose an exposure framework to actively reveal such stealthy attacks without modifying sensor interfaces. The framework introduces a suspect mode in which the defender injects random exposure shakes into the nominal control inputs, thus creating a discrepancy between the defender's true state estimates and the attacker's manipulated state estimates, preventing the attack from remaining stealthy. We further derive an explicit exposure condition that characterizes the minimum shake magnitude to guarantee the finite-time exposure and a compensable condition that ensures the shakes do not degrade closed-loop…
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