HeLiPR: Heterogeneous LiDAR Dataset for inter-LiDAR Place Recognition under Spatiotemporal Variations
Minwoo Jung, Wooseong Yang, Dongjae Lee, Hyeonjae Gil, Giseop Kim,, Ayoung Kim

TL;DR
The paper introduces HeLiPR, a comprehensive heterogeneous LiDAR dataset designed for inter-LiDAR place recognition, capturing diverse configurations, environments, and temporal variations to advance SLAM robustness.
Contribution
HeLiPR is the first dataset supporting inter-LiDAR place recognition across heterogeneous sensors with diverse FOVs and environments, enabling robust long-term SLAM research.
Findings
First heterogeneous LiDAR dataset for inter-LiDAR place recognition.
Includes diverse environments and sensor configurations.
Supports research in long-term and cross-sensor SLAM applications.
Abstract
Place recognition is crucial for robot localization and loop closure in simultaneous localization and mapping (SLAM). Light Detection and Ranging (LiDAR), known for its robust sensing capabilities and measurement consistency even in varying illumination conditions, has become pivotal in various fields, surpassing traditional imaging sensors in certain applications. Among various types of LiDAR, spinning LiDARs are widely used, while non-repetitive scanning patterns have recently been utilized in robotics applications. Some LiDARs provide additional measurements such as reflectivity, Near Infrared (NIR), and velocity from Frequency modulated continuous wave (FMCW) LiDARs. Despite these advances, there is a lack of comprehensive datasets reflecting the broad spectrum of LiDAR configurations for place recognition. To tackle this issue, our paper proposes the HeLiPR dataset, curated…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Indoor and Outdoor Localization Technologies · 3D Surveying and Cultural Heritage
