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Analysis

This paper addresses the challenge of generating dynamic motions for legged robots using reinforcement learning. The core innovation lies in a continuation-based learning framework that combines pretraining on a simplified model and model homotopy transfer to a full-body environment. This approach aims to improve efficiency and stability in learning complex dynamic behaviors, potentially reducing the need for extensive reward tuning or demonstrations. The successful deployment on a real robot further validates the practical significance of the research.
Reference

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.