AffordDP: Generalizable Diffusion Policy with Transferable Affordance
Shijie Wu, Yihang Zhu, Yunao Huang, Kaizhen Zhu, Jiayuan Gu, Jingyi, Yu, Ye Shi, Jingya Wang

TL;DR
This paper introduces AffordDP, a diffusion-based manipulation policy leveraging transferable affordances to improve generalization to unseen objects and categories in robotic manipulation tasks.
Contribution
The paper proposes a novel diffusion policy that models affordances via 3D contact points and trajectories, enabling transferability and improved generalization across object categories.
Findings
Outperforms previous diffusion-based methods in simulation and real-world tests.
Successfully generalizes to unseen object instances and categories.
Incorporates affordance guidance to refine action sequences during diffusion sampling.
Abstract
Diffusion-based policies have shown impressive performance in robotic manipulation tasks while struggling with out-of-domain distributions. Recent efforts attempted to enhance generalization by improving the visual feature encoding for diffusion policy. However, their generalization is typically limited to the same category with similar appearances. Our key insight is that leveraging affordances--manipulation priors that define "where" and "how" an agent interacts with an object--can substantially enhance generalization to entirely unseen object instances and categories. We introduce the Diffusion Policy with transferable Affordance (AffordDP), designed for generalizable manipulation across novel categories. AffordDP models affordances through 3D contact points and post-contact trajectories, capturing the essential static and dynamic information for complex tasks. The transferable…
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Taxonomy
TopicsEconomic Policies and Impacts
