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Diffusion-EDFs: Bi-equivariant Denoising Generative Modeling on SE(3) for Visual Robotic Manipulation

Authors :
Ryu, Hyunwoo
Kim, Jiwoo
Chang, Junwoo
Ahn, Hyun Seok
Seo, Joohwan
Kim, Taehan
Kim, Yubin
Choi, Jongeun
Horowitz, Roberto
Publication Year :
2023

Abstract

Recent studies have verified that equivariant methods can significantly improve the data efficiency, generalizability, and robustness in robot learning. Meanwhile, denoising diffusion-based generative modeling has recently gained significant attention as a promising approach for robotic manipulation learning from demonstrations with stochastic behaviors. In this paper, we present Diffusion-EDFs, a novel approach that incorporates spatial roto-translation equivariance, i.e., SE(3)-equivariance to diffusion generative modeling. By integrating SE(3)-equivariance into our model architectures, we demonstrate that our proposed method exhibits remarkable data efficiency, requiring only 5 to 10 task demonstrations for effective end-to-end training. Furthermore, our approach showcases superior generalizability compared to previous diffusion-based manipulation methods.<br />Comment: 27 pages, 4 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2309.02685
Document Type :
Working Paper