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Language-conditioned Learning for Robotic Manipulation: A Survey

A survey of language-conditioned robotic manipulation explores advancements in reinforcement learning, imitation learning, and foundational models to enable robots to understand and execute natural language instructions.

Year
2023
Venue
arXiv 2023
Authors
7
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Abstract onlyARXIV-DEFAULT

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arxiv.org/abs/2312.10807ARXIV-DEFAULT
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Abstract

Language-conditioned robotic manipulation represents a cutting-edge area of research, enabling seamless communication and cooperation between humans and robotic agents. This field focuses on teaching robotic systems to comprehend and execute instructions conveyed in natural language. To achieve this, the development of robust language understanding models capable of extracting actionable insights from textual input is essential. In this comprehensive survey, we systematically explore recent advancements in language-conditioned approaches within the context of robotic manipulation. We analyze these approaches based on their learning paradigms, which encompass reinforcement learning, imitation learning, and the integration of foundational models, such as large language models and vision-language models. Furthermore, we conduct an in-depth comparative analysis, considering aspects like semantic information extraction, environment & evaluation, auxiliary tasks, and task representation. Finally, we outline potential future research directions in the realm of language-conditioned learning for robotic manipulation, with the topic of generalization capabilities and safety issues. The GitHub repository of this paper can be found at https://github.com/hk-zh/language-conditioned-robot-manipulation-models

Authors

7