Movement Primitive Diffusion: Learning Gentle Robotic Manipulation of Deformable Objects
About
Policy learning in robot-assisted surgery (RAS) lacks data efficient and versatile methods that exhibit the desired motion quality for delicate surgical interventions. To this end, we introduce Movement Primitive Diffusion (MPD), a novel method for imitation learning (IL) in RAS that focuses on gentle manipulation of deformable objects. The approach combines the versatility of diffusion-based imitation learning (DIL) with the high-quality motion generation capabilities of Probabilistic Dynamic Movement Primitives (ProDMPs). This combination enables MPD to achieve gentle manipulation of deformable objects, while maintaining data efficiency critical for RAS applications where demonstration data is scarce. We evaluate MPD across various simulated and real world robotic tasks on both state and image observations. MPD outperforms state-of-the-art DIL methods in success rate, motion quality, and data efficiency. Project page: https://scheiklp.github.io/movement-primitive-diffusion/
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Whiteboard Wiping | Whiteboard wiping | Success Rate92 | 5 | |
| Robot Manipulation | MetaWorld and ManiSkill Medium | Success Rate64.8 | 4 | |
| Robot Manipulation | MetaWorld and ManiSkill Hard | Success Rate28.6 | 4 | |
| Robot Manipulation | MetaWorld and ManiSkill Average | Success Rate64.1 | 4 | |
| Robot Manipulation | MetaWorld and ManiSkill Easy | Success Rate98.9 | 4 | |
| Free-form surface wiping | Free-form surface wiping | Success Rate52 | 4 |