Dynamic Policy Learning for Legged Robots via Model Homotopy
Analysis
Key Takeaways
- •Proposes a novel approach to dynamic policy learning for legged robots.
- •Employs a continuation-based learning framework with simplified model pretraining and model homotopy transfer.
- •Demonstrates improved efficiency and stability compared to baseline methods.
- •Successfully validated on a real quadrupedal robot performing dynamic tasks.
“The paper introduces a continuation-based learning framework that combines simplified model pretraining and model homotopy transfer to efficiently generate and refine complex dynamic behaviors.”