Neural Configuration-Space Barriers for Manipulation Planning and Control
Long, Kehan, Lee, Ki Myung Brian, Raicevic, Nikola, Attasseri, Niyas, Leok, Melvin, Atanasov, Nikolay
–arXiv.org Artificial Intelligence
Planning and control for high-dimensional robot manipulators in cluttered, dynamic environments require both computational efficiency and robust safety guarantees. Inspired by recent advances in learning configuration-space distance functions (CDFs) as robot body representations, we propose a unified framework for motion planning and control that formulates safety constraints as CDF barriers. A CDF barrier approximates the local free configuration space, substantially reducing the number of collision-checking operations during motion planning. However, learning a CDF barrier with a neural network and relying on online sensor observations introduce uncertainties that must be considered during control synthesis. To address this, we develop a distributionally robust CDF barrier formulation for control that explicitly accounts for modeling errors and sensor noise without assuming a known underlying distribution. Simulations and hardware experiments on a 6-DoF xArm manipulator show that our neural CDF barrier formulation enables efficient planning and robust real-time safe control in cluttered and dynamic environments, relying only on onboard point-cloud observations.
arXiv.org Artificial Intelligence
Mar-6-2025
- Country:
- North America > United States > California > San Diego County (0.14)
- Genre:
- Research Report (0.50)
- Technology: