Proprioceptive Invariant Robot State Estimation
Lin, Tzu-Yuan, Li, Tingjun, Tong, Wenzhe, Ghaffari, Maani
–arXiv.org Artificial Intelligence
This paper reports on developing a real-time invariant proprioceptive robot state estimation framework called DRIFT. A didactic introduction to invariant Kalman filtering is provided to make this cutting-edge symmetry-preserving approach accessible to a broader range of robotics applications. Furthermore, this work dives into the development of a proprioceptive state estimation framework for dead reckoning that only consumes data from an onboard inertial measurement unit and kinematics of the robot, with two optional modules, a contact estimator and a gyro filter for low-cost robots, enabling a significant capability on a variety of robotics platforms to track the robot's state over long trajectories in the absence of perceptual data. Extensive real-world experiments using a legged robot, an indoor wheeled robot, a field robot, and a full-size vehicle, as well as simulation results with a marine robot, are provided to understand the limits of DRIFT.
arXiv.org Artificial Intelligence
Nov-7-2023
- Genre:
- Research Report (1.00)
- Technology:
- Information Technology > Artificial Intelligence > Robots > Locomotion (0.53)