K-GMRF: Kinetic Gauss-Markov Random Field for First-Principles Covariance Tracking on Lie Groups
About
Tracking non-stationary covariance matrices is fundamental to vision yet hindered by existing estimators that either neglect manifold constraints or rely on first-order updates, incurring inevitable phase lag during rapid evolution. We propose K-GMRF, an online, training-free framework for covariance tracking that reformulates the problem as forced rigid-body motion on Lie groups. Derived from the Euler-Poincar\'e equations, our method interprets observations as torques driving a latent angular velocity, propagated via a structure-preserving symplectic integrator. We theoretically prove that this second-order dynamics achieves zero steady-state error under constant rotation, strictly superior to the proportional lag of first-order baselines. Validation across three domains demonstrates robust tracking fidelity: (i) on synthetic ellipses, K-GMRF reduces angular error by 30x compared to Riemannian EMA while maintaining stability at high speeds; (ii) on SO(3) stabilization with 20% dropout, it decreases geodesic error from 29.4{\deg} to 9.9{\deg}; and (iii) on OTB motion-blur sequences, it improves loU from 0.55 to 0.74 on BlurCar2 with a 96% success rate. As a fully differentiable symplectic module, K-GMRF provides a plug-and-play geometric prior for data-constrained scenarios and an interpretable layer within modern deep architectures.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Camera stabilization | Camera Stabilization on SO(3) | Geodesic Error (deg)4.4 | 11 | |
| Synthetic covariance tracking | Rotating Ellipse on SPD(2) | Angular Error (deg)0.51 | 10 | |
| Visual Object Tracking | OTB Motion-Blur Sequences | IoU (BlurBody)65 | 10 | |
| Camera stabilization | SO(3) 0% Dropout | Geodesic Error (deg)4.4 | 5 | |
| Camera stabilization | SO(3) 10% Dropout | Geodesic Error (deg)5.8 | 5 | |
| Camera stabilization | SO(3) 20% Dropout | Geodesic Error (deg)6.5 | 5 | |
| Camera stabilization | SO(3) 30% Dropout | Geodesic Error (deg)8 | 5 | |
| Camera stabilization | SO(3) 40% Dropout | Geodesic Error (deg)14.3 | 5 |