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Main Authors: Min, Chen, Si, Shubin, Wang, Xu, Xue, Hanzhang, Jiang, Weizhong, Chen, Zitong, Li, Mengmeng, Mei, Jilin, Shang, Erke, Xiao, Zhipeng, Dai, Bin, Zhu, Qi, Fu, Hao, Zhao, Dawei, Xiao, Liang, Nie, Yiming, Hu, Yu
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2410.07701
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author Min, Chen
Si, Shubin
Wang, Xu
Xue, Hanzhang
Jiang, Weizhong
Chen, Zitong
Li, Mengmeng
Mei, Jilin
Shang, Erke
Xiao, Zhipeng
Dai, Bin
Zhu, Qi
Fu, Hao
Zhao, Dawei
Xiao, Liang
Nie, Yiming
Hu, Yu
author_facet Min, Chen
Si, Shubin
Wang, Xu
Xue, Hanzhang
Jiang, Weizhong
Chen, Zitong
Li, Mengmeng
Mei, Jilin
Shang, Erke
Xiao, Zhipeng
Dai, Bin
Zhu, Qi
Fu, Hao
Zhao, Dawei
Xiao, Liang
Nie, Yiming
Hu, Yu
contents Research on autonomous driving in unstructured outdoor environments is less advanced than in structured urban settings due to challenges like environmental diversities and scene complexity. These environments-such as rural areas and rugged terrains-pose unique obstacles that are not common in structured urban areas. Despite these difficulties, autonomous driving in unstructured outdoor environments is crucial for applications in agriculture, mining, and military operations. Our survey reviews over 250 papers for autonomous driving in unstructured outdoor environments, covering offline mapping, pose estimation, environmental perception, path planning, end-to-end autonomous driving, datasets, and relevant challenges. We also discuss emerging trends and future research directions. This review aims to consolidate knowledge and encourage further research for autonomous driving in unstructured environments. To support ongoing work, we maintain an active repository with up-to-date literature and open-source projects at: https://github.com/chaytonmin/Survey-Autonomous-Driving-in-Unstructured-Environments.
format Preprint
id arxiv_https___arxiv_org_abs_2410_07701
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Autonomous Driving in Unstructured Environments: How Far Have We Come?
Min, Chen
Si, Shubin
Wang, Xu
Xue, Hanzhang
Jiang, Weizhong
Chen, Zitong
Li, Mengmeng
Mei, Jilin
Shang, Erke
Xiao, Zhipeng
Dai, Bin
Zhu, Qi
Fu, Hao
Zhao, Dawei
Xiao, Liang
Nie, Yiming
Hu, Yu
Robotics
Research on autonomous driving in unstructured outdoor environments is less advanced than in structured urban settings due to challenges like environmental diversities and scene complexity. These environments-such as rural areas and rugged terrains-pose unique obstacles that are not common in structured urban areas. Despite these difficulties, autonomous driving in unstructured outdoor environments is crucial for applications in agriculture, mining, and military operations. Our survey reviews over 250 papers for autonomous driving in unstructured outdoor environments, covering offline mapping, pose estimation, environmental perception, path planning, end-to-end autonomous driving, datasets, and relevant challenges. We also discuss emerging trends and future research directions. This review aims to consolidate knowledge and encourage further research for autonomous driving in unstructured environments. To support ongoing work, we maintain an active repository with up-to-date literature and open-source projects at: https://github.com/chaytonmin/Survey-Autonomous-Driving-in-Unstructured-Environments.
title Autonomous Driving in Unstructured Environments: How Far Have We Come?
topic Robotics
url https://arxiv.org/abs/2410.07701