Event
Parameterized locomotion RL paper transfers robust walking policies to Cassie
Key points
- The paper trains robust locomotion policies in simulation using domain randomization and transfers them to the physical Cassie robot.
- The learned policies support dynamic behaviors such as velocity tracking, walking-height variation, and yaw turning.
- It adds a high-quality Cassie result for model-free RL control beyond hand-tuned model-based walking.
Company context
US robotics company focused on humanoid systems for logistics and warehouse automation. Digit is designed for real-world material handling tasks in structured environments.
Context
- Company
- Agility Robotics
- Segment
- Humanoid
- Event type
- Research Publication
- Geography
- Salem · United States