Event
RSS jumping-control paper transfers versatile dynamic jumps to Cassie hardware
Key points
- The RSS paper trains a reinforcement-learning controller for robust bipedal jumping across different distances and directions.
- After multi-stage training, the policy transfers directly to real Cassie hardware for standing long jumps, elevated-platform jumps, and multi-axis jumps.
- It is a strong Cassie research result because it pushes the platform beyond walking into aggressive dynamic maneuvers.
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