AI RESEARCH
Active Bayesian Inference for Robust Control under Sensor False Data Injection Attacks
arXiv CS.LG
•
ArXi:2604.11410v1 Announce Type: new We present a framework for bridging the gap between sensor attack detection and recovery in cyber-physical systems. The proposed framework models modern-day, complex perception pipelines as bipartite graphs, which combined with anomaly detector alerts defines a Bayesian network for inferring compromised sensors. An active probing strategy exploits system nonlinearities to maximize distinguishability between attack hypotheses, while compromised sensors are selectively disabled to maintain reliable state estimation.