ShanghaiTech Mapping Robot is All You Need: Robot System for Collecting Universal Ground Vehicle Datasets
This paper presents the ShanghaiTech Mapping Robot, a state-of-the-art unmanned ground vehicle (UGV) designed for collecting comprehensive multi-sensor datasets to support research in robotics, Simultaneous Localization and Mapping (SLAM), computer vision, and autonomous driving. The robot is equipp...
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Zusammenfassung: | This paper presents the ShanghaiTech Mapping Robot, a state-of-the-art
unmanned ground vehicle (UGV) designed for collecting comprehensive
multi-sensor datasets to support research in robotics, Simultaneous
Localization and Mapping (SLAM), computer vision, and autonomous driving. The
robot is equipped with a wide array of sensors including RGB cameras, RGB-D
cameras, event-based cameras, IR cameras, LiDARs, mmWave radars, IMUs,
ultrasonic range finders, and a GNSS RTK receiver. The sensor suite is
integrated onto a specially designed mechanical structure with a centralized
power system and a synchronization mechanism to ensure spatial and temporal
alignment of the sensor data. A 16-node on-board computing cluster handles
sensor control, data collection, and storage. We describe the hardware and
software architecture of the robot in detail and discuss the calibration
procedures for the various sensors and investigate the interference for LiDAR
and RGB-D sensors. The capabilities of the platform are demonstrated through an
extensive outdoor dataset collected in a diverse campus environment.
Experiments with two LiDAR-based and two RGB-based SLAM approaches showcase the
potential of the dataset to support development and benchmarking for robotics.
To facilitate research, we make the dataset publicly available along with the
associated robot sensor calibration data:
https://slam-hive.net/wiki/ShanghaiTech_Datasets |
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DOI: | 10.48550/arxiv.2406.16713 |