Proprioceptive State Estimation for Quadruped Robots using Invariant Kalman Filtering and Scale-Variant Robust Cost Functions
Accurate state estimation is crucial for legged robot locomotion, as it provides the necessary information to allow control and navigation. However, it is also challenging, especially in scenarios with uneven and slippery terrain. This paper presents a new Invariant Extended Kalman filter for legged...
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Zusammenfassung: | Accurate state estimation is crucial for legged robot locomotion, as it
provides the necessary information to allow control and navigation. However, it
is also challenging, especially in scenarios with uneven and slippery terrain.
This paper presents a new Invariant Extended Kalman filter for legged robot
state estimation using only proprioceptive sensors. We formulate the
methodology by combining recent advances in state estimation theory with the
use of robust cost functions in the measurement update. We tested our
methodology on quadruped robots through experiments and public datasets,
showing that we can obtain a pose drift up to 40% lower in trajectories
covering a distance of over 450m, in comparison with a state-of-the-art
Invariant Extended Kalman filter. |
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DOI: | 10.48550/arxiv.2410.05256 |