Attention-Based Neural-Augmented Kalman Filter for Legged Robot State Estimation
About
In this letter, we propose an Attention-Based Neural-Augmented Kalman Filter (AttenNKF) for state estimation in legged robots. Foot slip is a major source of estimation error: when slip occurs, kinematic measurements violate the no-slip assumption and inject bias during the update step. Our objective is to estimate this slip-induced error and compensate for it. To this end, we augment an Invariant Extended Kalman Filter (InEKF) with a neural compensator that uses an attention mechanism to infer error conditioned on foot-slip severity and then applies this estimate as a post-update compensation to the InEKF state (i.e., after the filter update). The compensator is trained in a latent space, which aims to reduce sensitivity to raw input scales and encourages structured slip-conditioned compensations, while preserving the InEKF recursion. Experiments demonstrate improved performance compared to existing legged-robot state estimators, particularly under slip-prone conditions.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Position Estimation | Outdoor Grass | REpos Error0.155 | 4 | |
| State estimation | Indoor Flat Terrain ID 1.0 (test) | Rotational Error (RE)1.254 | 4 | |
| State estimation | Indoor Gravel Field Terrain ID 1.0 (test) | Rotational Error1.15 | 4 | |
| State estimation | Indoor Teflon Sheet Terrain ID 1.0 (test) | Rotational Error1.352 | 4 | |
| State estimation | Indoor Stairs ID 1.0 (test) | Rotational Error3.346 | 4 | |
| State estimation | Indoor Overall Scenario ID 1.0 (test) | Rotational Error (RE_rot)2.143 | 4 | |
| State estimation | Indoor Soft Terrain OOD 1.0 (test) | Rotational Error1.478 | 4 |