Recent advances in one-shot imitation learning have enabled robots to acquire new manipulation skills from a single human demonstration. While existing methods achieve strong performance on single-step tasks, they remain limited in their ability to handle long-horizon, multi-step tasks without additional model training or manual annotation. We propose a method that can be applied to this setting provided a single demonstration without additional model training or manual annotation. We evaluated our method on multi-step and single-step manipulation tasks where our method achieves an average success rate of 82.5% and 90%, respectively. Our method matches and exceeds the performance of the baselines in both these cases. We also compare the performance and computational efficiency of alternative pre-trained feature extractors within our framework.
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Vijja Wichitwechkarn
Emlyn Williams
Charles E. Fox
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Wichitwechkarn et al. (Mon,) studied this question.
www.synapsesocial.com/papers/68f5fcce8d54a28a75cf1dd5 — DOI: https://doi.org/10.48550/arxiv.2509.24972
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