A Survey on Large Language Model-empowered Autonomous Driving

Kaydedildi:
Detaylı Bibliyografya
Yayımlandı:arXiv.org (Nov 30, 2024), p. n/a
Yazar: Zhu, Yuxuan
Diğer Yazarlar: Wang, Shiyi, Zhong, Wenqing, Shen, Nianchen, Li, Yunqi, Wang, Siqi, Li, Zhiheng, Wu, Cathy, He, Zhengbing, Li, Li
Baskı/Yayın Bilgisi:
Cornell University Library, arXiv.org
Konular:
Online Erişim:Citation/Abstract
Full text outside of ProQuest
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022 |a 2331-8422 
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045 0 |b d20241130 
100 1 |a Zhu, Yuxuan 
245 1 |a A Survey on Large Language Model-empowered Autonomous Driving 
260 |b Cornell University Library, arXiv.org  |c Nov 30, 2024 
513 |a Working Paper 
520 3 |a Artificial intelligence (AI) plays a crucial role in autonomous driving (AD) research, propelling its development towards intelligence and efficiency. Currently, the development of AD technology follows two main technical paths: modularization and end-to-end. Modularization decompose the driving task into modules such as perception, prediction, planning, and control, and train them separately. Due to the inconsistency of training objectives between modules, the integrated effect suffers from bias. End-to-end attempts to address this issue by utilizing a single model that directly maps from sensor data to control signals. This path has limited learning capabilities in a comprehensive set of features and struggles to handle unpredictable long-tail events and complex urban traffic scenarios. In the face of challenges encountered in both paths, many researchers believe that large language models (LLMs) with powerful reasoning capabilities and extensive knowledge understanding may be the solution, expecting LLMs to provide AD systems with deeper levels of understanding and decision-making capabilities. In light of the challenges faced by both paths, many researchers believe that LLMs, with their powerful reasoning abilities and extensive knowledge, could offer a solution. To understand if LLMs could enhance AD, this paper conducts a thorough analysis of the potential applications of LLMs in AD systems, including exploring their optimization strategies in both modular and end-to-end approaches, with a particular focus on how LLMs can tackle the problems and challenges present in current solutions. Furthermore, we discuss an important question: Can LLM-based artificial general intelligence (AGI) be a key to achieve high-level AD? We further analyze the potential limitations and challenges that LLMs may encounter in promoting the development of AD technology. 
653 |a Modularization 
653 |a Modules 
653 |a Large language models 
653 |a Technology assessment 
653 |a Artificial intelligence 
653 |a Modular systems 
653 |a Traffic control 
653 |a Reasoning 
700 1 |a Wang, Shiyi 
700 1 |a Zhong, Wenqing 
700 1 |a Shen, Nianchen 
700 1 |a Li, Yunqi 
700 1 |a Wang, Siqi 
700 1 |a Li, Zhiheng 
700 1 |a Wu, Cathy 
700 1 |a He, Zhengbing 
700 1 |a Li, Li 
773 0 |t arXiv.org  |g (Nov 30, 2024), p. n/a 
786 0 |d ProQuest  |t Engineering Database 
856 4 1 |3 Citation/Abstract  |u https://www.proquest.com/docview/3109527207/abstract/embedded/7BTGNMKEMPT1V9Z2?source=fedsrch 
856 4 0 |3 Full text outside of ProQuest  |u http://arxiv.org/abs/2409.14165