SaBi3d—A LiDAR Point Cloud Data Set of Car-to-Bicycle Overtaking Maneuvers

Data Pub Date : 2024-07-24 DOI:10.3390/data9080090
Christian Odenwald, Moritz Beeking
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Abstract

While cycling presents environmental benefits and promotes a healthy lifestyle, the risks associated with overtaking maneuvers by motorized vehicles represent a significant barrier for many potential cyclists. A large-scale analysis of overtaking maneuvers could inform traffic researchers and city planners how to reduce these risks by better understanding these maneuvers. Drawing from the fields of sensor-based cycling research and from LiDAR-based traffic data sets, this paper provides a step towards addressing these safety concerns by introducing the Salzburg Bicycle 3d (SaBi3d) data set, which consists of LiDAR point clouds capturing car-to-bicycle overtaking maneuvers. The data set, collected using a LiDAR-equipped bicycle, facilitates the detailed analysis of a large quantity of overtaking maneuvers without the need for manual annotation through enabling automatic labeling by a neural network. Additionally, a benchmark result for 3D object detection using a competitive neural network is provided as a baseline for future research. The SaBi3d data set is structured identically to the nuScenes data set, and therefore offers compatibility with numerous existing object detection systems. This work provides valuable resources for future researchers to better understand cycling infrastructure and mitigate risks, thus promoting cycling as a viable mode of transportation.
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汽车与自行车超车动作的 SaBi3d-A 激光雷达点云数据集
尽管骑自行车有益于环境并能促进健康的生活方式,但机动车超车动作所带来的风险对许多潜在的骑自行车者来说是一个重大障碍。对超车动作进行大规模分析,可以让交通研究人员和城市规划者了解如何通过更好地理解这些动作来降低风险。本文借鉴了基于传感器的自行车研究领域和基于激光雷达的交通数据集,通过介绍萨尔茨堡自行车 3d (SaBi3d) 数据集,为解决这些安全问题迈出了一步。该数据集使用装有激光雷达的自行车采集,通过神经网络自动标注,无需人工标注即可对大量超车动作进行详细分析。此外,还提供了使用竞争性神经网络进行三维物体检测的基准结果,作为未来研究的基线。SaBi3d 数据集的结构与 nuScenes 数据集完全相同,因此可与现有的众多物体检测系统兼容。这项工作为未来的研究人员更好地了解自行车基础设施和降低风险提供了宝贵的资源,从而促进自行车成为一种可行的交通方式。
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