In counter-adversarial systems, to infer the strategy of an intelligent adversarial agent, the defender agent needs to cognitively sense the information that the adversary has gathered about the latter. Prior works on the problem employ linear Gaussian state-space models and solve this inverse cognition problem by designing inverse stochastic filters. However, in practice, counter-adversarial systems are generally highly nonlinear. In this paper, we address this scenario by formulating inverse cognition as a nonlinear Gaussian state-space model, wherein the adversary employs an unscented Kalman filter (UKF) to estimate the defender's state with reduced linearization errors. To estimate the adversary's estimate of the defender, we propose and develop an inverse UKF (IUKF) system. We then derive theoretical guarantees for the stochastic stability of IUKF in the mean-squared boundedness sense. Numerical experiments for multiple practical applications show that the estimation error of IUKF converges and closely follows the recursive Cram\'{e}r-Rao lower bound.
翻译:在对抗性系统中,为了推断智能对手的策略,防御代理需要感知对手已经收集的有关后者的信息。先前研究采用线性高斯状态空间模型,并通过设计逆随机滤波器来解决这个逆认知问题。然而,在实践中,反对性系统通常高度非线性。本文通过将逆认知表示为非线性高斯状态空间模型来解决这种情况,在该模型中,对手使用无臭卡尔曼滤波器 (UKF) 估计防御者的状态并减少线性化误差。为估计对手的防御者估计,我们提出并发展了一个逆 UKF 系统 (IUKF)。然后,我们从均方有界性的角度推导出 IUKF 的随机稳定性的理论保证。多个实际应用的数值实验表明,IUKF 的估计误差收敛并紧跟递归 Crame-Rao 下限。