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Main Authors: Mei, Yuting, Wang, Ye, Zheng, Sipeng, Jin, Qin
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2406.16578
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author Mei, Yuting
Wang, Ye
Zheng, Sipeng
Jin, Qin
author_facet Mei, Yuting
Wang, Ye
Zheng, Sipeng
Jin, Qin
contents As robotic agents increasingly assist humans in reality, quadruped robots offer unique opportunities for interaction in complex scenarios due to their agile movement. However, building agents that can autonomously navigate, adapt, and respond to versatile goals remains a significant challenge. In this work, we introduce QuadrupedGPT designed to follow diverse commands with agility comparable to that of a pet. The primary challenges addressed include: i) effectively utilizing multimodal observations for informed decision-making; ii) achieving agile control by integrating locomotion and navigation; iii) developing advanced cognition to execute long-term objectives. Our QuadrupedGPT interprets human commands and environmental contexts using a large multimodal model. Leveraging its extensive knowledge base, the agent autonomously assigns parameters for adaptive locomotion policies and devises safe yet efficient paths toward its goals. Additionally, it employs high-level reasoning to decompose long-term goals into a sequence of executable subgoals. Through comprehensive experiments, our agent shows proficiency in handling diverse tasks and intricate instructions, representing a significant step toward the development of versatile quadruped agents for open-ended environments.
format Preprint
id arxiv_https___arxiv_org_abs_2406_16578
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle QuadrupedGPT: Towards a Versatile Quadruped Agent in Open-ended Worlds
Mei, Yuting
Wang, Ye
Zheng, Sipeng
Jin, Qin
Robotics
Artificial Intelligence
As robotic agents increasingly assist humans in reality, quadruped robots offer unique opportunities for interaction in complex scenarios due to their agile movement. However, building agents that can autonomously navigate, adapt, and respond to versatile goals remains a significant challenge. In this work, we introduce QuadrupedGPT designed to follow diverse commands with agility comparable to that of a pet. The primary challenges addressed include: i) effectively utilizing multimodal observations for informed decision-making; ii) achieving agile control by integrating locomotion and navigation; iii) developing advanced cognition to execute long-term objectives. Our QuadrupedGPT interprets human commands and environmental contexts using a large multimodal model. Leveraging its extensive knowledge base, the agent autonomously assigns parameters for adaptive locomotion policies and devises safe yet efficient paths toward its goals. Additionally, it employs high-level reasoning to decompose long-term goals into a sequence of executable subgoals. Through comprehensive experiments, our agent shows proficiency in handling diverse tasks and intricate instructions, representing a significant step toward the development of versatile quadruped agents for open-ended environments.
title QuadrupedGPT: Towards a Versatile Quadruped Agent in Open-ended Worlds
topic Robotics
Artificial Intelligence
url https://arxiv.org/abs/2406.16578