The Mini Wheelbot Dataset: High-Fidelity Data for Robot Learning
By: Henrik Hose , Paul Brunzema , Devdutt Subhasish and more
Potential Business Impact:
Robot learns to balance using new practice data.
The development of robust learning-based control algorithms for unstable systems requires high-quality, real-world data, yet access to specialized robotic hardware remains a significant barrier for many researchers. This paper introduces a comprehensive dynamics dataset for the Mini Wheelbot, an open-source, quasi-symmetric balancing reaction wheel unicycle. The dataset provides 1 kHz synchronized data encompassing all onboard sensor readings, state estimates, ground-truth poses from a motion capture system, and third-person video logs. To ensure data diversity, we include experiments across multiple hardware instances and surfaces using various control paradigms, including pseudo-random binary excitation, nonlinear model predictive control, and reinforcement learning agents. We include several example applications in dynamics model learning, state estimation, and time-series classification to illustrate common robotics algorithms that can be benchmarked on our dataset.
Similar Papers
The Mini Wheelbot: A Testbed for Learning-based Balancing, Flips, and Articulated Driving
Robotics
Robot learns to balance and drive itself.
The Mini Wheelbot: A Testbed for Learning-based Balancing, Flips, and Articulated Driving
Robotics
Robot learns to balance and drive itself.
RoboWheel: A Data Engine from Real-World Human Demonstrations for Cross-Embodiment Robotic Learning
Robotics
Teaches robots to do tasks by watching humans.