EquiBim: Learning Symmetry-Equivariant Policy for Bimanual Manipulation
arXiv cs.RO / 3/25/2026
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Key Points
- The paper introduces EquiBim, a symmetry-equivariant policy learning framework designed for bimanual (dual-arm) robotic manipulation in imitation learning settings.
- It explicitly models bilateral physical symmetry as a group action on both observation and action spaces, enforcing an equivariance constraint so the policy behaves consistently under symmetric transformations.
- EquiBim is model-agnostic and can be integrated into multiple imitation learning pipelines across different observation modalities (e.g., images, point clouds) and action representations (e.g., end-effector space and joint space).
- Evaluations on the RoboTwin dual-arm platform show improved performance and robustness to distribution shifts in simulation, with additional validation on a real-world dual-arm system.
- The authors conclude that incorporating physical symmetry as an inductive bias is a simple but effective way to reduce asymmetric or inconsistent behaviors in robots operating under inherently symmetric task/kinematic structures.
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