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首页> 外文期刊>Intelligent Transportation Systems Magazine, IEEE >Automatic Vehicle Detection With Roadside LiDAR Data Under Rainy and Snowy Conditions
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Automatic Vehicle Detection With Roadside LiDAR Data Under Rainy and Snowy Conditions

机译:自动车辆检测在多雨和雪条件下具有路边潮流雷达数据

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摘要

The previous studies showed that rainy and snowy weather can reduce the quality of LiDAR data. In rainy and snowy weather, laser beams of LiDAR were often blocked by raindrops or snowflakes, which was called weather occlusion. The vehicle detection with weather occlusion is a challenge. When the traditional density-based spatial clustering of applications with noise (DBSCAN) was used for vehicle clustering, the data processing showed that the false detection rate of the conventional DBSCAN under the snowy weather was high. This paper aims to present the characteristics of roadside LiDAR data in snowy and rainy days and improve the accuracy of vehicle detection during challenging weather conditions. A revised DBSCAN method named 3D-SDBSCAN is raised up to distinguish vehicle points and snowflakes in the LiDAR data. Adaptive parameters were applied in the revised DBSCAN method to detect vehicles with different distances from the roadside LiDAR sensor. The performance of the proposed method and the conventional DBSCAN algorithm were compared using the data collected under rainy and snowy conditions. The results showed that the 3D-SDBSCAN algorithm could overcome weather occlusion issue better than the conventional one.
机译:以前的研究表明,多雨和雪天气可降低LIDAR数据的质量。在多雨和雪的天气中,激光雷达的激光束常被雨滴或雪花堵塞,被称为天气闭塞。天气遮挡的车辆检测是挑战。当使用噪声(DBSCAN)的传统基于密度的空间聚类时用于车辆聚类时,数据处理表明,在雪天气下传统DBSCAN的假检测率很高。本文旨在呈现雪域和雨天道路潮汐数据的特点,提高挑战天气条件下车辆检测的准确性。提出了一个名为3D-SDBSCAN的修订的DBSCAN方法,以区分LIDAR数据中的车辆点和雪花。在经修订的DBSCAN方法中应用自适应参数,以检测具有不同距离的车辆与路边激光乐传感器不同。使用在多雨和下雪条件下收集的数据进行比较所提出的方法和常规DBSCAN算法的性能。结果表明,3D-SDBSCAN算法可以克服比传统的遮挡问题更好。

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    Univ Nevada Dept Civil & Environm Engn Reno NV 89557 USA;

    Univ Nevada Dept Civil & Environm Engn Reno NV 89557 USA;

    Soochow Univ Sch Urban Rail Transportat Suzhou Peoples R China;

    Texas Tech Univ Dept Civil Environm & Construct Engn Lubbock TX 79409 USA;

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