Himali SinghKumar Vijay MishraArpan Chattopadhyay
Rapid advances in designing cognitive and counteradversarial systems have motivated the development of inverse Bayesian filters. In this setting, a cognitive 'adversary' tracks its target of interest via a stochastic framework such as a Kalman filter (KF). The target or 'defender' then employs another inverse stochastic filter to infer the forward filter estimates of the defender computed by the adversary. For linear systems, the inverse Kalman filter (I-KF) has been recently shown to be effective in these counter-adversarial applications. In the paper, contrary to prior works, we focus on non-linear system dynamics and formulate the inverse unscented KF (I-UKF) to estimate the defender's state based on the unscented transform, or equivalently, statistical linearization technique. We then generalize this framework to unknown systems by proposing reproducing kernel Hilbert space-based UKF (RKHS-UKF) to learn the system dynamics and estimate the state based on its observations. Our theoretical analyses to guarantee the stochastic stability of IUKF and RKHS-UKF in the mean-squared sense show that, provided the forward filters are stable, the inverse filters are also stable under mild system-level conditions. We show that, despite being a suboptimal filter, our proposed I-UKF is a conservative estimator, i.e., I-UKF's estimated error covariance upper-bounds its true value. Our numerical experiments for several different applications demonstrate the estimation performance of the proposed filters using recursive Cramér-Rao lower bound and non-credibility index (NCI).
Himali SinghKumar Vijay MishraArpan Chattopadhyay
David J. Albers (3965753)Matthew Levine (3965756)Bruce Gluckman (3965759)Henry Ginsberg (3965750)George Hripcsak (242191)Lena Mamykina (3965747)
Yan LiuYi‐Fei PuXiaodong ShenJiliu Zhou