MUSE: A Real-Time Multi-Sensor State Estimator for Quadruped Robots
About
This paper introduces an innovative state estimator, MUSE (MUlti-sensor State Estimator), designed to enhance state estimation's accuracy and real-time performance in quadruped robot navigation. The proposed state estimator builds upon our previous work presented in [1]. It integrates data from a range of onboard sensors, including IMUs, encoders, cameras, and LiDARs, to deliver a comprehensive and reliable estimation of the robot's pose and motion, even in slippery scenarios. We tested MUSE on a Unitree Aliengo robot, successfully closing the locomotion control loop in difficult scenarios, including slippery and uneven terrain. Benchmarking against Pronto [2] and VILENS [3] showed 67.6% and 26.7% reductions in translational errors, respectively. Additionally, MUSE outperformed DLIO [4], a LiDAR-inertial odometry system in rotational errors and frequency, while the proprioceptive version of MUSE (P-MUSE) outperformed TSIF [5], with a 45.9% reduction in absolute trajectory error (ATE).
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| 3D Odometry | GaRLILEO (SNU) Overpass | APE RMSE Translation6.507 | 7 | |
| 3D Odometry | GaRLILEO SNU Downstair | APE RMSE Translation (m)8.323 | 7 | |
| 3D Odometry | GaRLILEO (SNU) Upstair | APE RMSE Translation (m)5.307 | 7 | |
| Legged Odometry | GaRLILEO (SNU) - CorriLoop non-elevation-change (2D) | APE RMSE Translational Error (m)5.811 | 7 | |
| Legged Odometry | GaRLILEO (SNU) Atrium non-elevation-change (2D) | APE RMSE Trans. (m)3.297 | 7 | |
| Legged Odometry | GaRLILEO (SNU) - BridgeLoop non-elevation-change (2D) | APE RMSE Translational Error (m)4.195 | 7 | |
| 3D Odometry | GaRLILEO (SNU) BiCorridor | APE RMSE Translation (m)15.035 | 7 | |
| 3D Odometry | GaRLILEO (SNU) SlopeStair | APE RMSE Translation (m)35.519 | 7 | |
| Legged Odometry | GaRLILEO (SNU) - Tunnel non-elevation-change (2D) | APE RMSE Translation (m)10.194 | 7 | |
| 3D Odometry | GaRLILEO (SNU) Quad | APE RMSE Translation (m)172.2 | 7 |