HeLiPR: Heterogeneous LiDAR dataset for inter-LiDAR place recognition under spatiotemporal variations

Minwoo Jung, Wooseong Yang, Dongjae Lee, Hyeonjae Gil, Giseop Kim, Ayoung Kim
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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 especially for place recognition with heterogeneous LiDARs, embodying spatiotemporal variations. To the best of our knowledge, the HeLiPR dataset is the first heterogeneous LiDAR dataset supporting inter-LiDAR place recognition with both non-repetitive and spinning LiDARs, accommodating different field of view (FOV)s and varying numbers of rays. The dataset covers diverse environments, from urban cityscapes to high-dynamic freeways, over a month, enhancing adaptability and robustness across scenarios. Notably, HeLiPR dataset includes trajectories parallel to MulRan sequences, making it valuable for research in heterogeneous LiDAR place recognition and long-term studies. The dataset is accessible at https://sites.google.com/view/heliprdataset .
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HeLiPR:用于时空变化下激光雷达间地点识别的异构激光雷达数据集
在同步定位与绘图(SLAM)中,位置识别对于机器人定位和闭环至关重要。光探测与测距(LiDAR)以其强大的传感能力和即使在不同光照条件下也能保持测量一致性而著称,已在各个领域发挥着举足轻重的作用,并在某些应用中超越了传统的成像传感器。在各种类型的激光雷达中,旋转激光雷达被广泛使用,而非重复扫描模式最近也被用于机器人应用中。有些激光雷达还提供额外的测量功能,如反射率、近红外(NIR)和频率调制连续波(FMCW)激光雷达的速度。尽管取得了这些进展,但仍缺乏反映用于地点识别的各种激光雷达配置的综合数据集。为了解决这个问题,我们的论文提出了 HeLiPR 数据集,该数据集是专门为使用异质激光雷达进行地点识别而设计的,体现了时空变化。据我们所知,HeLiPR 数据集是第一个异构激光雷达数据集,它支持使用非重复和旋转激光雷达进行激光雷达间地点识别,可适应不同的视场(FOV)和不同数量的光线。该数据集覆盖了从城市景观到高动态高速公路的各种环境,历时一个月,增强了跨场景的适应性和鲁棒性。值得注意的是,HeLiPR 数据集包括与 MulRan 序列平行的轨迹,因此对异构激光雷达地点识别研究和长期研究非常有价值。该数据集可通过以下网址访问:https://sites.google.com/view/heliprdataset 。
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