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Main Authors: Wang, Zihan, Liang, Brian, Dhat, Varad, Brumbaugh, Zander, Walker, Nick, Krishna, Ranjay, Cakmak, Maya
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2411.12960
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author Wang, Zihan
Liang, Brian
Dhat, Varad
Brumbaugh, Zander
Walker, Nick
Krishna, Ranjay
Cakmak, Maya
author_facet Wang, Zihan
Liang, Brian
Dhat, Varad
Brumbaugh, Zander
Walker, Nick
Krishna, Ranjay
Cakmak, Maya
contents Understanding robot behaviors and experiences through natural language is crucial for developing intelligent and transparent robotic systems. Recent advancement in large language models (LLMs) makes it possible to translate complex, multi-modal robotic experiences into coherent, human-readable narratives. However, grounding real-world robot experiences into natural language is challenging due to many reasons, such as multi-modal nature of data, differing sample rates, and data volume. We introduce RONAR, an LLM-based system that generates natural language narrations from robot experiences, aiding in behavior announcement, failure analysis, and human interaction to recover failure. Evaluated across various scenarios, RONAR outperforms state-of-the-art methods and improves failure recovery efficiency. Our contributions include a multi-modal framework for robot experience narration, a comprehensive real-robot dataset, and empirical evidence of RONAR's effectiveness in enhancing user experience in system transparency and failure analysis.
format Preprint
id arxiv_https___arxiv_org_abs_2411_12960
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle I Can Tell What I am Doing: Toward Real-World Natural Language Grounding of Robot Experiences
Wang, Zihan
Liang, Brian
Dhat, Varad
Brumbaugh, Zander
Walker, Nick
Krishna, Ranjay
Cakmak, Maya
Robotics
Understanding robot behaviors and experiences through natural language is crucial for developing intelligent and transparent robotic systems. Recent advancement in large language models (LLMs) makes it possible to translate complex, multi-modal robotic experiences into coherent, human-readable narratives. However, grounding real-world robot experiences into natural language is challenging due to many reasons, such as multi-modal nature of data, differing sample rates, and data volume. We introduce RONAR, an LLM-based system that generates natural language narrations from robot experiences, aiding in behavior announcement, failure analysis, and human interaction to recover failure. Evaluated across various scenarios, RONAR outperforms state-of-the-art methods and improves failure recovery efficiency. Our contributions include a multi-modal framework for robot experience narration, a comprehensive real-robot dataset, and empirical evidence of RONAR's effectiveness in enhancing user experience in system transparency and failure analysis.
title I Can Tell What I am Doing: Toward Real-World Natural Language Grounding of Robot Experiences
topic Robotics
url https://arxiv.org/abs/2411.12960