English

EquiBot: SIM(3)-Equivariant Diffusion Policy for Generalizable and Data Efficient Learning

Robotics 2024-10-30 v2 Machine Learning

Abstract

Building effective imitation learning methods that enable robots to learn from limited data and still generalize across diverse real-world environments is a long-standing problem in robot learning. We propose Equibot, a robust, data-efficient, and generalizable approach for robot manipulation task learning. Our approach combines SIM(3)-equivariant neural network architectures with diffusion models. This ensures that our learned policies are invariant to changes in scale, rotation, and translation, enhancing their applicability to unseen environments while retaining the benefits of diffusion-based policy learning such as multi-modality and robustness. We show on a suite of 6 simulation tasks that our proposed method reduces the data requirements and improves generalization to novel scenarios. In the real world, with 10 variations of 6 mobile manipulation tasks, we show that our method can easily generalize to novel objects and scenes after learning from just 5 minutes of human demonstrations in each task.

Keywords

Cite

@article{arxiv.2407.01479,
  title  = {EquiBot: SIM(3)-Equivariant Diffusion Policy for Generalizable and Data Efficient Learning},
  author = {Jingyun Yang and Zi-ang Cao and Congyue Deng and Rika Antonova and Shuran Song and Jeannette Bohg},
  journal= {arXiv preprint arXiv:2407.01479},
  year   = {2024}
}

Comments

CoRL 2024. The first two authors contributed equally. Project page: https://equi-bot.github.io

R2 v1 2026-06-28T17:25:16.481Z