ArXiv TLDR

Morphologically Equivariant Flow Matching for Bimanual Mobile Manipulation

🐦 Tweet
2605.12228

Max Siebenborn, Daniel Ordoñez Apraez, Sophie Lueth, Giulio Turrisi, Massimiliano Pontil + 2 more

cs.RO

TLDR

This paper introduces a morphologically equivariant flow matching policy that leverages bilateral symmetry for improved bimanual mobile manipulation.

Key contributions

  • Formalizes morphological symmetry as an inductive bias for bimanual robots.
  • Introduces a C2-equivariant flow matching policy for ambidextrous control.
  • Improves sample efficiency and enables zero-shot generalization to mirrored tasks.
  • Validated on planar, 6-DoF, and real-world TIAGo++ mobile manipulation tasks.

Why it matters

This work highlights morphological symmetry as a critical, yet underexplored, inductive bias for bimanual robots. It significantly improves sample efficiency and enables zero-shot generalization, making robot learning more scalable and robust for complex mobile manipulation.

Original Abstract

Mobile manipulation requires coordinated control of high-dimensional, bimanual robots. Imitation learning methods have been broadly used to solve these robotic tasks, yet typically ignore the bilateral morphological symmetry inherent in such systems. We argue that morphological symmetry is an underexplored but crucial inductive bias for learning in bimanual mobile manipulation: knowing how to solve a task in one configuration directly determines how to solve its mirrored counterpart. In this paper, we formalize this symmetry prior and show that it constrains optimal bimanual policies to be ambidextrous and equivariant under reflections across the robot's sagittal plane. We introduce a $\mathbb{C}_2$-equivariant flow matching policy that enforces reflective symmetry either via a regularized training loss or an equivariant velocity network. Across planar and 6-DoF mobile manipulation tasks, symmetry-informed policies consistently improve sample efficiency and achieve zero-shot generalization to mirrored configurations absent from the training distribution. We further validate this zero-shot generalization capability on a real-world manipulation task with a TIAGo++ robot. Together, our findings establish morphological symmetry as an effective, generalizable, and scalable inductive bias for ambidextrous generative policy learning.

📬 Weekly AI Paper Digest

Get the top 10 AI/ML arXiv papers from the week — summarized, scored, and delivered to your inbox every Monday.