中国信号交叉口无人机数据集

Yanchao Xu, Wenbo Shao, Jun Li, Kai Yang, Weida Wang, Hua Huang, Chen Lv, Hong Wang
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引用次数: 0

摘要

十字路口是自动驾驶任务最具挑战性的场景之一。由于复杂性和随机性,十字路口的基本应用(例如,行为建模,运动预测,安全验证等)严重依赖于数据驱动技术。因此,对交叉口交通参与者的轨迹数据集有着强烈的需求。目前,大部分城市的十字路口都安装了红绿灯。然而,目前还没有一个大规模、高质量、公开可用的信号交叉口轨迹数据集。因此,本文选择了中国天津一个典型的两相信号交叉口。此外,pipeline还设计构建了一个信号交叉口数据集(Signalized INtersection Dataset, SIND),该数据集包含7个小时的记录,包括7个类型的13000多个tp。然后,记录新新市交通信号灯违规行为。并与其他同类作品进行了比较。SIND的特点可以概括为:1)SIND提供了更全面的信息,包括交通灯状态、运动参数、高清(HD)地图等;2)TPs的类别多样且具有特色,其中弱势道路使用者(vru)的比例高达62.6%;3)显示了非机动车多次违反交通灯的行为。我们相信,SIND将是对现有数据集的有效补充,并能促进自动驾驶相关研究。该数据集可通过https://github.com/SOTIF-AVLab/SinD在线获得
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SIND: A Drone Dataset at Signalized Intersection in China
Intersection is one of the most challenging scenarios for autonomous driving tasks. Due to the complexity and stochasticity, essential applications (e.g., behavior modeling, motion prediction, safety validation, etc.) at intersections rely heavily on data-driven techniques. Thus, there is an intense demand for trajectory datasets of traffic participants (TPs) in intersections. Currently, most intersections in urban areas are equipped with traffic lights. However, there is not yet a large-scale, high-quality, publicly available trajectory dataset for signalized intersections. Therefore, in this paper, a typical two-phase signalized intersection is selected in Tianjin, China. Besides, a pipeline is designed to construct a Signalized INtersection Dataset (SIND), which contains 7 hours of recording including over 13,000 TPs with 7 types. Then, the behaviors of traffic light violations in SIND are recorded. Furthermore, the SIND is also compared with other similar works. The features of the SIND can be summarized as follows: 1) SIND provides more comprehensive information, including traffic light states, motion parameters, High Definition (HD) map, etc. 2) The category of TPs is diverse and characteristic, where the proportion of vulnerable road users (VRUs) is up to 62.6% 3) Multiple traffic light violations of non-motor vehicles are shown. We believe that SIND would be an effective supplement to existing datasets and can promote related research on autonomous driving.The dataset is available online via: https://github.com/SOTIF-AVLab/SinD
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