ROLGSYMar 12, 2025

SE(3)-Equivariant Robot Learning and Control: A Tutorial Survey

arXiv:2503.09829v314 citationsh-index: 9Int j control autom syst
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This is an incremental tutorial survey that organizes existing knowledge about equivariant methods for robotics researchers and practitioners.

This tutorial survey reviews SE(3)-equivariant neural networks and control methods for robotics, which explicitly integrate 3D rotational and translational symmetries to improve efficiency and generalization compared to conventional deep learning approaches that struggle with inherent data symmetries.

Recent advances in deep learning and Transformers have driven major breakthroughs in robotics by employing techniques such as imitation learning, reinforcement learning, and LLM-based multimodal perception and decision-making. However, conventional deep learning and Transformer models often struggle to process data with inherent symmetries and invariances, typically relying on large datasets or extensive data augmentation. Equivariant neural networks overcome these limitations by explicitly integrating symmetry and invariance into their architectures, leading to improved efficiency and generalization. This tutorial survey reviews a wide range of equivariant deep learning and control methods for robotics, from classic to state-of-the-art, with a focus on SE(3)-equivariant models that leverage the natural 3D rotational and translational symmetries in visual robotic manipulation and control design. Using unified mathematical notation, we begin by reviewing key concepts from group theory, along with matrix Lie groups and Lie algebras. We then introduce foundational group-equivariant neural network design and show how the group-equivariance can be obtained through their structure. Next, we discuss the applications of SE(3)-equivariant neural networks in robotics in terms of imitation learning and reinforcement learning. The SE(3)-equivariant control design is also reviewed from the perspective of geometric control. Finally, we highlight the challenges and future directions of equivariant methods in developing more robust, sample-efficient, and multi-modal real-world robotic systems.

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