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arxiv: 2408.16228 · v1 · pith:OQX7BJZRnew · submitted 2024-08-29 · 💻 cs.RO · cs.LG

Policy Adaptation via Language Optimization: Decomposing Tasks for Few-Shot Imitation

classification 💻 cs.RO cs.LG
keywords tasksadaptationlanguagepalodemonstrationsfew-shotlong-horizonoptimization
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Learned language-conditioned robot policies often struggle to effectively adapt to new real-world tasks even when pre-trained across a diverse set of instructions. We propose a novel approach for few-shot adaptation to unseen tasks that exploits the semantic understanding of task decomposition provided by vision-language models (VLMs). Our method, Policy Adaptation via Language Optimization (PALO), combines a handful of demonstrations of a task with proposed language decompositions sampled from a VLM to quickly enable rapid nonparametric adaptation, avoiding the need for a larger fine-tuning dataset. We evaluate PALO on extensive real-world experiments consisting of challenging unseen, long-horizon robot manipulation tasks. We find that PALO is able of consistently complete long-horizon, multi-tier tasks in the real world, outperforming state of the art pre-trained generalist policies, and methods that have access to the same demonstrations.

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Cited by 3 Pith papers

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