Vision-Language Models Provide Promptable Representations for Reinforcement Learning

Published: 03 Jul 2024, Last Modified: 03 Jul 2024ICML 2024 FM-Wild Workshop PosterEveryoneRevisionsBibTeXCC BY 4.0
Keywords: Reinforcement Learning, Vision-Language Models, Promptable Representations, Embodied Learning
TL;DR: We leverage vision-language models' common-sense knowledge and textual reasoning capabilities to provide promptable state representations for embodied control tasks that are generalizable and conducive to reinforcement learning.
Abstract: Humans can quickly learn new behaviors by leveraging background world knowledge. In contrast, agents trained with reinforcement learning (RL) typically learn behaviors from scratch. We thus propose a novel approach that uses the vast amounts of general and indexable world knowledge encoded in vision-language models (VLMs) pre-trained on Internet-scale data for embodied RL. We initialize policies with VLMs by using them as promptable representations: embeddings that encode semantic features of visual observations based on the VLM's internal knowledge and reasoning capabilities, as elicited through prompts that provide task context and auxiliary information. We evaluate our approach on visually-complex, long horizon RL tasks in Minecraft and robot navigation in Habitat. We find that our policies trained on embeddings from off-the-shelf, general-purpose VLMs outperform equivalent policies trained on generic, non-promptable image embeddings. We also find our approach outperforms instruction-following methods and performs comparably to domain-specific embeddings. Finally, we show that our approach can use chain-of-thought prompting to produce representations of common-sense semantic reasoning, improving policy performance in novel scenes by 1.5 times.
Submission Number: 10
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