HK-MEMS, a MEMS LiDAR dataset on urban tunnels and dynamic scenarios
- Jianyuan Ruan,
- Dan Zhang
Jianyuan Ruan
The Hong Kong Polytechnic University Department of Mechanical Engineering
Author ProfileAbstract
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Public datasets play a crucial role in advancing autonomous robotics
research. The rapid evolution of sensors and applications continually
drives the need for new datasets. For instance, the shift from
mechanical LiDAR (Light Detection and Ranging) sensors on autonomous
vehicles to (hybrid) solid-state LiDAR technologies like MEMS
(Micro-electromechanical systems) LiDAR has brought about enhanced
durability and reduced costs. However, datasets supporting research on
these sensors are scarce. This paper presents the multi-modular HK-MEMS
dataset, incorporating data from LiDARs, a camera, GNSS, and Inertial
Navigation Systems. Notably, it is the first dataset to offer
automotive-grade MEMS LiDAR data for research in Simultaneous
Localization and Mapping (SLAM). Compared with existing datasets, our
data emphasize extreme environments like degenerate urban tunnels and
dynamic scenarios, aiming to enhance the robustness of SLAM systems. The
data are collected on various platforms including a handheld device, a
mobile robot, and notably, buses with real driving behaviors. We collect
187 minutes and 75.4 kilometers of data. State-of-the-art SLAM methods
are evaluated on this benchmark. The result highlights the challenges in
extreme environments and underscores the ongoing need to enhance the
robustness of SLAM systems. This dataset serves as a valuable platform
for exploring the potential and limitations of MEMS LiDAR, and a
challenge to enhance the robustness of SLAM in urban navigation
scenarios. The data is available at
https://github.com/RuanJY/HK_MEMS_Dataset.30 Aug 2024Submitted to Journal of Field Robotics 02 Sep 2024Submission Checks Completed
02 Sep 2024Assigned to Editor
02 Sep 2024Review(s) Completed, Editorial Evaluation Pending
29 Sep 2024Reviewer(s) Assigned