Transferring Foundation Models for Generalizable Robotic Manipulation
Improving the generalization capabilities of general-purpose robotic manipulation agents in the real world has long been a significant challenge. Existing approaches often rely on collecting large-scale robotic data which is costly and time-consuming, such as the RT-1 dataset. However, due to insuff...
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Zusammenfassung: | Improving the generalization capabilities of general-purpose robotic
manipulation agents in the real world has long been a significant challenge.
Existing approaches often rely on collecting large-scale robotic data which is
costly and time-consuming, such as the RT-1 dataset. However, due to
insufficient diversity of data, these approaches typically suffer from limiting
their capability in open-domain scenarios with new objects and diverse
environments. In this paper, we propose a novel paradigm that effectively
leverages language-reasoning segmentation mask generated by internet-scale
foundation models, to condition robot manipulation tasks. By integrating the
mask modality, which incorporates semantic, geometric, and temporal correlation
priors derived from vision foundation models, into the end-to-end policy model,
our approach can effectively and robustly perceive object pose and enable
sample-efficient generalization learning, including new object instances,
semantic categories, and unseen backgrounds. We first introduce a series of
foundation models to ground natural language demands across multiple tasks.
Secondly, we develop a two-stream 2D policy model based on imitation learning,
which processes raw images and object masks to predict robot actions with a
local-global perception manner. Extensive realworld experiments conducted on a
Franka Emika robot arm demonstrate the effectiveness of our proposed paradigm
and policy architecture. Demos can be found in our submitted video, and more
comprehensive ones can be found in link1 or link2. |
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DOI: | 10.48550/arxiv.2306.05716 |