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The RoboDrive Challenge: Drive Anytime Anywhere in Any Condition

Authors :
Kong, Lingdong
Xie, Shaoyuan
Hu, Hanjiang
Niu, Yaru
Ooi, Wei Tsang
Cottereau, Benoit R.
Ng, Lai Xing
Ma, Yuexin
Zhang, Wenwei
Pan, Liang
Chen, Kai
Liu, Ziwei
Qiu, Weichao
Zhang, Wei
Cao, Xu
Lu, Hao
Chen, Ying-Cong
Kang, Caixin
Zhou, Xinning
Ying, Chengyang
Shang, Wentao
Wei, Xingxing
Dong, Yinpeng
Yang, Bo
Jiang, Shengyin
Ma, Zeliang
Ji, Dengyi
Li, Haiwen
Huang, Xingliang
Tian, Yu
Kou, Genghua
Jia, Fan
Liu, Yingfei
Wang, Tiancai
Li, Ying
Hao, Xiaoshuai
Yang, Yifan
Zhang, Hui
Wei, Mengchuan
Zhou, Yi
Zhao, Haimei
Zhang, Jing
Li, Jinke
He, Xiao
Cheng, Xiaoqiang
Zhang, Bingyang
Zhao, Lirong
Ding, Dianlei
Liu, Fangsheng
Yan, Yixiang
Wang, Hongming
Ye, Nanfei
Luo, Lun
Tian, Yubo
Zuo, Yiwei
Cao, Zhe
Ren, Yi
Li, Yunfan
Liu, Wenjie
Wu, Xun
Mao, Yifan
Li, Ming
Liu, Jian
Liu, Jiayang
Qin, Zihan
Chu, Cunxi
Xu, Jialei
Zhao, Wenbo
Jiang, Junjun
Liu, Xianming
Wang, Ziyan
Li, Chiwei
Li, Shilong
Yuan, Chendong
Yang, Songyue
Liu, Wentao
Chen, Peng
Zhou, Bin
Wang, Yubo
Zhang, Chi
Sun, Jianhang
Chen, Hai
Yang, Xiao
Wang, Lizhong
Fu, Dongyi
Lin, Yongchun
Yang, Huitong
Li, Haoang
Luo, Yadan
Cheng, Xianjing
Xu, Yong
Publication Year :
2024

Abstract

In the realm of autonomous driving, robust perception under out-of-distribution conditions is paramount for the safe deployment of vehicles. Challenges such as adverse weather, sensor malfunctions, and environmental unpredictability can severely impact the performance of autonomous systems. The 2024 RoboDrive Challenge was crafted to propel the development of driving perception technologies that can withstand and adapt to these real-world variabilities. Focusing on four pivotal tasks -- BEV detection, map segmentation, semantic occupancy prediction, and multi-view depth estimation -- the competition laid down a gauntlet to innovate and enhance system resilience against typical and atypical disturbances. This year's challenge consisted of five distinct tracks and attracted 140 registered teams from 93 institutes across 11 countries, resulting in nearly one thousand submissions evaluated through our servers. The competition culminated in 15 top-performing solutions, which introduced a range of innovative approaches including advanced data augmentation, multi-sensor fusion, self-supervised learning for error correction, and new algorithmic strategies to enhance sensor robustness. These contributions significantly advanced the state of the art, particularly in handling sensor inconsistencies and environmental variability. Participants, through collaborative efforts, pushed the boundaries of current technologies, showcasing their potential in real-world scenarios. Extensive evaluations and analyses provided insights into the effectiveness of these solutions, highlighting key trends and successful strategies for improving the resilience of driving perception systems. This challenge has set a new benchmark in the field, providing a rich repository of techniques expected to guide future research in this field.<br />Comment: ICRA 2024; 32 pages, 24 figures, 5 tables; Code at https://robodrive-24.github.io/

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2405.08816
Document Type :
Working Paper