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The RoboDrive Challenge: Drive Anytime Anywhere in Any Condition

14 May 2024
Lingdong Kong
Shaoyuan Xie
Han-Chung Hu
Yaru Niu
Wei Tsang Ooi
Benoit R. Cottereau
Lai Xing Ng
Yuexin Ma
Wenwei Zhang
Liang Pan
Kai Chen
Ziwei Liu
Weichao Qiu
Wei Zhang
Xu Cao
Hao Lu
Yingzhe Chen
Cai Kang
Xinning Zhou
Chengyang Ying
Wentao Shang
Xin-Yi Wei
Yinpeng Dong
Bo Yang
Shengyin Jiang
Zeliang Ma
Dengyi Ji
Haiwen Li
Xing-Yu Huang
Yu Tian
Genghua Kou
Fan Jia
Yingfei Liu
Tian-Han Wang
Ying Li
Xiaoshuai Hao
Yifan Yang
Hui Zhang
Mengchuan Wei
Yi Zhou
Haimei Zhao
Jing Zhang
Jinke Li
Xiaodong He
Xiaoqiang Cheng
Bingyan Zhang
Lirong Zhao
D. Ding
Fan Liu
Yi-Dan Yan
Hongmin Wang
Nanfei Ye
Lun Luo
Yubo Tian
Yiwei Zuo
Zhenghao Cao
Yi Ren
Yunfan Li
Wenjie Liu
Xun Wu
Yifan Mao
Ming Li
Jian Liu
Jiayang Liu
Zihan Qin
Cunxi Chu
Jialei Xu
Wenbo Zhao
Junjun Jiang
Xianming Liu
Ziyan Wang
Chiwei Li
Shilong Li
Chen Yuan
Songyue Yang
Wentao Liu
Peng Chen
Bin Zhou
Yubo Wang
Chi Zhang
Jian-Feng Sun
Hai Chen
Xiao Yang
Lizhong Wang
Dongyi Fu
Yong-Ce Lin
Hui-Yong Yang
Hao Li
Yadan Luo
Xianjing Cheng
Yong-mei Xu
    AAML
ArXiv (abs)PDFHTML
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.

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