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Experiments on RLBench

rlbench

Conclusion

The existing learning paradigm of visual pre-training on human data for robotic manipulation encounters the human-robot domain discrepancy. Our work takes a preliminary attempt to solve this challenging problem. In this work, we contribute a new adaptation paradigm by leveraging existing semantic-aligned human-robot video data and proposing an efficient semantic alignment method. In this way, the existing human-data pre-trained models can be efficiently and explicitly adapted to the robot domain, without the need to be tailored for each downstream robotic environment. Experiments on 25 robotic manipulation tasks across different environments and different pre-trained models demonstrate the efficacy of our proposed method.

BibTeX

@article{zhou2024mitigating,
        title={Mitigating the Human-Robot Domain Discrepancy in Visual Pre-training for Robotic Manipulation},
        author={Zhou, Jiaming and Ma, Teli and Lin, Kun-Yu and Qiu, Ronghe and Wang, Zifan and Liang, Junwei},
        journal={arXiv preprint arXiv:2406.14235},
        year={2024}
      }