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NTU4DRadLM: 4D Radar-centric Multi-Modal Dataset for Localization and Mapping

Authors :
Zhang, Jun
Zhuge, Huayang
Liu, Yiyao
Peng, Guohao
Wu, Zhenyu
Zhang, Haoyuan
Lyu, Qiyang
Li, Heshan
Zhao, Chunyang
Kircali, Dogan
Mharolkar, Sanat
Yang, Xun
Yi, Su
Wang, Yuanzhe
Wang, Danwei
Publication Year :
2023

Abstract

Simultaneous Localization and Mapping (SLAM) is moving towards a robust perception age. However, LiDAR- and visual- SLAM may easily fail in adverse conditions (rain, snow, smoke and fog, etc.). In comparison, SLAM based on 4D Radar, thermal camera and IMU can work robustly. But only a few literature can be found. A major reason is the lack of related datasets, which seriously hinders the research. Even though some datasets are proposed based on 4D radar in past four years, they are mainly designed for object detection, rather than SLAM. Furthermore, they normally do not include thermal camera. Therefore, in this paper, NTU4DRadLM is presented to meet this requirement. The main characteristics are: 1) It is the only dataset that simultaneously includes all 6 sensors: 4D radar, thermal camera, IMU, 3D LiDAR, visual camera and RTK GPS. 2) Specifically designed for SLAM tasks, which provides fine-tuned ground truth odometry and intentionally formulated loop closures. 3) Considered both low-speed robot platform and fast-speed unmanned vehicle platform. 4) Covered structured, unstructured and semi-structured environments. 5) Considered both middle- and large- scale outdoor environments, i.e., the 6 trajectories range from 246m to 6.95km. 6) Comprehensively evaluated three types of SLAM algorithms. Totally, the dataset is around 17.6km, 85mins, 50GB and it will be accessible from this link: https://github.com/junzhang2016/NTU4DRadLM<br />Comment: 2023 IEEE International Intelligent Transportation Systems Conference (ITSC 2023)

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2309.00962
Document Type :
Working Paper