AI RESEARCH

Learned Memory Attenuation in Sage-Husa Kalman Filters for Robust UAV State Estimation

arXiv CS.LG

ArXi:2605.18704v1 Announce Type: cross Unmanned Aerial Vehicles in dynamic environments face telemetry outages, structural vibrations, and regime-dependent noise that invalidate the stationary covariance assumptions of classical Kalman filters. The Sage-Husa Kalman Filter (SHKF) estimates noise statistics online, but its reliance on a static, scalar forgetting factor forces a strict compromise between steady-state stability and transient responsiveness. We