Published October 25, 2024
| Version v1
Conference paper
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Multi-Sensor Fusion for Quadruped Robot State Estimation on Challenging Terrain
Description
This paper presents the preliminary results of MUSE,
a MUlti-sensor State Estimator for quadruped robots,
combining
data from IMU, encoders, and cameras to accurately estimate
pose
and velocity, even in challenging environments such as
uneven
terrain. Experiments on a Unitree Aliengo robot, tested on
stairs,
rocks, and slippery surfaces, show MUSE's superior
performance
compared to using only a T265 tracking camera, providing
reliable
and high-frequency state estimation.
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