Hybrid Diffusion for Simultaneous Symbolic and Continuous Planning
About
Constructing robots to accomplish long-horizon tasks is a long-standing challenge within artificial intelligence. Approaches using generative methods, particularly Diffusion Models, have gained attention due to their ability to model continuous robotic trajectories for planning and control. However, we show that these models struggle with long-horizon tasks that involve complex decision-making and, in general, are prone to confusing different modes of behavior, leading to failure. To remedy this, we propose to augment continuous trajectory generation by simultaneously generating a high-level symbolic plan. We show that this requires a novel mix of discrete variable diffusion and continuous diffusion, which dramatically outperforms the baselines. In addition, we illustrate how this hybrid diffusion process enables flexible trajectory synthesis, allowing us to condition synthesized actions on partial and complete symbolic conditions.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Arrange Blocks | Robotic Simulation Arrange Blocks | Success Rate74 | 6 | |
| Tool Use | Robotic Simulation Tool Use | Success Rate78 | 6 | |
| X-Arm Sorting | Robotic Simulation X-Arm Sorting | Success Rate86 | 6 | |
| Sorting | Real-world Franka Emika manipulator | Success Rate70 | 4 | |
| Tool Use | Real-world Franka Emika manipulator | Success Rate60 | 4 |