基于3d - lidar的行人检测在交通信号灯控制中的应用

Dennis Sprute, Florian Hufen, Tim Westerhold, Holger Flatt
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引用次数: 0

摘要

交通灯通常提供按钮,让行人要求过马路。虽然这种方法有效且简单,但也存在一些缺点:(1)需要明确的用户交互;(2)无法获得行人数量的信息;(3)无法获得行人的漏洞信息。因此,以需求为导向的红绿灯控制优化是不可能的。为了解决这一问题,我们提出了一种基于行人检测和脆弱性分类方法的需求导向交通灯控制概念。这种方法结合了保护隐私的3D-LiDAR数据采集和最先进的深度学习方法。对来自德国两个城市的真实交通数据的评估显示,行人检测和脆弱性分类的总体准确率为96%。最后,我们展示了我们的以需求为导向的交通灯控制如何有助于(1)行人信号请求的自动化,(2)减少行人的等待时间,(3)根据脆弱性调整绿色相位的长度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
3D-LiDAR-based Pedestrian Detection for Demand-Oriented Traffic Light Control
Traffic lights typically offer push buttons for pedestrians to request crossing the road. Although this method is effective and simple, it has several drawbacks: (1) it requires an explicit user interaction, (2) no information about the number of pedestrians is obtained and (3) there is no information about pedestrians’ vulnerabilities. Thus, it is not possible to optimize the traffic light control in a demand-oriented way. To address this problem, we present a concept for a demand-oriented traffic light control which is based on a novel pedestrian detection and vulnerability classification method. This approach combines privacy-preserving 3D-LiDAR data acquisition and state-of-the-art deep learning methods. An evaluation on real traffic data obtained from two cities in Germany reveals an overall accuracy of 96 % for pedestrian detection and vulnerability classification. Finally, we show how our demand-oriented traffic light control contributes to (1) an automation of pedestrian signal requests, (2) a reduction of pedestrians’ waiting times and (3) an adaption of the green phase’s length according to vulnerabilities.
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