A survey on integration of large language models with intelligent robots

IF 2.3 4区 计算机科学 Q3 ROBOTICS
Yeseung Kim, Dohyun Kim, Jieun Choi, Jisang Park, Nayoung Oh, Daehyung Park
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Abstract

In recent years, the integration of large language models (LLMs) has revolutionized the field of robotics, enabling robots to communicate, understand, and reason with human-like proficiency. This paper explores the multifaceted impact of LLMs on robotics, addressing key challenges and opportunities for leveraging these models across various domains. By categorizing and analyzing LLM applications within core robotics elements—communication, perception, planning, and control—we aim to provide actionable insights for researchers seeking to integrate LLMs into their robotic systems. Our investigation focuses on LLMs developed post-GPT-3.5, primarily in text-based modalities while also considering multimodal approaches for perception and control. We offer comprehensive guidelines and examples for prompt engineering, facilitating beginners’ access to LLM-based robotics solutions. Through tutorial-level examples and structured prompt construction, we illustrate how LLM-guided enhancements can be seamlessly integrated into robotics applications. This survey serves as a roadmap for researchers navigating the evolving landscape of LLM-driven robotics, offering a comprehensive overview and practical guidance for harnessing the power of language models in robotics development.

Abstract Image

关于大型语言模型与智能机器人整合的调查
近年来,大型语言模型(LLMs)的集成彻底改变了机器人学领域,使机器人能够像人类一样熟练地进行交流、理解和推理。本文探讨了 LLM 对机器人技术的多方面影响,探讨了在各个领域利用这些模型的关键挑战和机遇。通过对机器人核心要素--通信、感知、规划和控制--中的 LLM 应用进行分类和分析,我们旨在为寻求将 LLM 集成到机器人系统中的研究人员提供可行的见解。我们的研究重点是 GPT-3.5 之后开发的 LLM,主要是基于文本的模式,同时也考虑了感知和控制的多模式方法。我们为提示工程提供了全面的指导和示例,方便初学者获得基于 LLM 的机器人解决方案。通过教程级示例和结构化提示构建,我们说明了如何将 LLM 引导的增强功能无缝集成到机器人应用中。本调查报告可作为研究人员在不断发展的 LLM 驱动型机器人技术领域的导航路线图,为在机器人技术开发中利用语言模型的力量提供全面的概述和实用指导。
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来源期刊
CiteScore
5.70
自引率
4.00%
发文量
46
期刊介绍: The journal directs special attention to the emerging significance of integrating robotics with information technology and cognitive science (such as ubiquitous and adaptive computing,information integration in a distributed environment, and cognitive modelling for human-robot interaction), which spurs innovation toward a new multi-dimensional robotic service to humans. The journal intends to capture and archive this emerging yet significant advancement in the field of intelligent service robotics. The journal will publish original papers of innovative ideas and concepts, new discoveries and improvements, as well as novel applications and business models which are related to the field of intelligent service robotics described above and are proven to be of high quality. The areas that the Journal will cover include, but are not limited to: Intelligent robots serving humans in daily life or in a hazardous environment, such as home or personal service robots, entertainment robots, education robots, medical robots, healthcare and rehabilitation robots, and rescue robots (Service Robotics); Intelligent robotic functions in the form of embedded systems for applications to, for example, intelligent space, intelligent vehicles and transportation systems, intelligent manufacturing systems, and intelligent medical facilities (Embedded Robotics); The integration of robotics with network technologies, generating such services and solutions as distributed robots, distance robotic education-aides, and virtual laboratories or museums (Networked Robotics).
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