Neural Configuration-Space Barriers for Manipulation Planning and Control
About
Planning and control for high-dimensional robot manipulators in cluttered dynamic environments require computational efficiency and robust safety guarantees. Inspired by recent advances in learning configuration-space distance functions (CDFs) as representations of robot bodies, we propose a unified approach 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 introduces uncertainties that must be considered during control synthesis. To address this, we develop a distributionally robust CDF barrier formulation for control that accounts for modeling errors and sensor noise without assuming a known underlying distribution. Simulations and hardware experiments on a UFactory xArm6 manipulator show that our neural CDF barrier formulation enables efficient planning and robust safe control in cluttered and dynamic environments, relying only on onboard point-cloud observations.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Motion Planning | 2-link arm | Collision Checks153.8 | 6 | |
| Motion Planning | 6-DoF xArm robot in PyBullet Simulation | Collision Checks Count278.5 | 6 | |
| Motion Planning | real 6-DoF xArm robot v1 (20 randomized trials) | Collision Checks634.8 | 5 | |
| Robot Control | 2-link arm dynamic | Success Rate99.2 | 4 | |
| Robot Control | 6-DoF xArm in PyBullet simulation Static | Success Rate100 | 4 | |
| Robot Control | 6-DoF xArm in PyBullet simulation Dynamic | Success Rate100 | 4 | |
| Robot Control | 2-link arm (static) | Success Rate100 | 4 |