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VIOLA: Imitation Learning for Vision-Based Manipulation with Object Proposal Priors

2022-10-20 15:20:37
Yifeng Zhu, Abhishek Joshi, Peter Stone, Yuke Zhu

Abstract

We introduce VIOLA, an object-centric imitation learning approach to learning closed-loop visuomotor policies for robot manipulation. Our approach constructs object-centric representations based on general object proposals from a pre-trained vision model. VIOLA uses a transformer-based policy to reason over these representations and attend to the task-relevant visual factors for action prediction. Such object-based structural priors improve deep imitation learning algorithm's robustness against object variations and environmental perturbations. We quantitatively evaluate VIOLA in simulation and on real robots. VIOLA outperforms the state-of-the-art imitation learning methods by $45.8\%$ in success rate. It has also been deployed successfully on a physical robot to solve challenging long-horizon tasks, such as dining table arrangement and coffee making. More videos and model details can be found in supplementary material and the project website: this https URL .

Abstract (translated)

URL

https://arxiv.org/abs/2210.11339

PDF

https://arxiv.org/pdf/2210.11339.pdf


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