ROCVJul 5, 2024

RAM: Retrieval-Based Affordance Transfer for Generalizable Zero-Shot Robotic Manipulation

BerkeleyPeking U
arXiv:2407.04689v176 citationsh-index: 16
Originality Highly original
AI Analysis

This addresses the challenge of expensive in-domain demonstrations for robotic manipulation, offering a more efficient and generalizable approach.

The paper tackles the problem of zero-shot robotic manipulation by proposing RAM, a retrieve-and-transfer framework that uses out-of-domain data to achieve generalizability across objects, environments, and embodiments, outperforming existing methods in diverse daily tasks.

This work proposes a retrieve-and-transfer framework for zero-shot robotic manipulation, dubbed RAM, featuring generalizability across various objects, environments, and embodiments. Unlike existing approaches that learn manipulation from expensive in-domain demonstrations, RAM capitalizes on a retrieval-based affordance transfer paradigm to acquire versatile manipulation capabilities from abundant out-of-domain data. First, RAM extracts unified affordance at scale from diverse sources of demonstrations including robotic data, human-object interaction (HOI) data, and custom data to construct a comprehensive affordance memory. Then given a language instruction, RAM hierarchically retrieves the most similar demonstration from the affordance memory and transfers such out-of-domain 2D affordance to in-domain 3D executable affordance in a zero-shot and embodiment-agnostic manner. Extensive simulation and real-world evaluations demonstrate that our RAM consistently outperforms existing works in diverse daily tasks. Additionally, RAM shows significant potential for downstream applications such as automatic and efficient data collection, one-shot visual imitation, and LLM/VLM-integrated long-horizon manipulation. For more details, please check our website at https://yxkryptonite.github.io/RAM/.

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes