DexFlyWheel: A Scalable and Self-improving Data Generation Framework for Dexterous Manipulation
–Neural Information Processing Systems
Dexterous manipulation is critical for advancing robot capabilities in real-world applications, yet diverse and high-quality datasets remain scarce. Existing data collection methods either rely on human teleoperation or require significant human engineering, or generate data with limited diversity, which restricts their scalability and generalization. In this paper, we introduce DexFlyWheel, a scalable data generation framework that employs a self-improving cycle to continuously enrich data diversity. Starting from efficient seed demonstrations warmup, DexFlyWheel expands the dataset through iterative cycles. Each cycle follows a closed-loop pipeline that integrates Imitation Learning (IL), residual Reinforcement Learning (RL), rollout trajectory collection, and data augmentation. Specifically, IL extracts human-like behaviors from demonstrations, and residual RL enhances policy generalization.
Neural Information Processing Systems
Jun-9-2026, 20:58:22 GMT
- Technology:
- Information Technology > Artificial Intelligence
- Robots (0.99)
- Machine Learning (0.76)
- Information Technology > Artificial Intelligence