Legged Locomotion

Legged locomotion research aims to understand and replicate the dynamic movements of legged animals in robots, focusing on achieving robust and efficient movement across diverse terrains. Current research emphasizes learning-based control methods, employing reinforcement learning, diffusion models, and transformer architectures to create adaptable and agile locomotion policies, often trained in simulation and transferred to real robots. This field is significant for advancing robotics capabilities in challenging environments, with applications ranging from search and rescue to planetary exploration, and also provides valuable insights into biological locomotion.

Papers