通过提供基于激光雷达的信号灯路口乱穿马路冲突分析,加强行人安全

A. Ansariyar, Abolfazl Taherpour, Di Yang, M. Jeihani
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引用次数: 0

摘要

动机针对行人在城市环境中固有的脆弱性,本文致力于提高行人的机动性和安全性。认识到行人乱穿马路是一个令人担忧的普遍问题,本研究通过在信号灯控制的十字路口应用激光雷达传感器来寻求切实可行的解决方案。通过深入研究乱穿马路事件的复杂性及其诱因,该研究旨在提供超越单纯统计分析的宝贵见解。本文的主要目的是评估和分析影响信号灯路口行人乱穿马路频率的各种因素,利用激光雷达传感器的安全应用能力。通过对六个月内检测到的 1000 起乱穿马路事件进行细致检查,本研究旨在找出与乱穿马路事件发生频率高度相关的独立变量。这些变量包括交通信号控制器模式、信号相位、车辆与行人的冲突、天气条件、车辆流量、向中间线行走的模式、行人流量以及独特的乱穿马路者比例。这项研究采用先进的统计回归模型,力求找出最佳模型,并揭示乱穿马路行为的微妙动态。研究的总体目标是为决策者和交通专家提供以数据为导向的知识,使他们能够在关键的城市十字路口实施有针对性的安全措施,降低行人风险并加强安全基础设施。研究结果从最优泊松回归模型中得出的研究结果,为了解信号灯控制交叉路口行人乱穿马路事件的多面性提供了重要依据。与傍晚(下午)模式相比,早晨和中午的信号控制器模式分别大幅减少了 44.7% 和 34.4%,从而揭示了乱穿马路行为在时间上的细微差别。此外,车辆与行人冲突的严重程度与乱穿马路者的数量成正比,强调了解决行人流量问题对缓解潜在冲突的重要性。值得注意的是,中间带植被的存在是一个重要因素,会显著增加行人乱穿马路的频率。这些结果有助于深入理解乱穿马路事件中环境、时间和行为因素之间错综复杂的相互作用。决策者和交通专家可以利用这些发现来制定有针对性的安全干预措施,从而在重要的城市十字路口为行人提供更安全的出行体验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Pedestrian Safety by Providing a LiDAR-Based Analysis of Jaywalking Conflicts at Signalized Intersections
Motives: In response to the inherent vulnerability of pedestrians in urban settings, this paper is driven by a commitment to enhancing their mobility and safety. Recognizing the prevalence of jaywalking as a significant concern, the study seeks practical solutions through the application of LiDAR sensors at signalized intersections. By delving into the complexities of jaywalking events and their contributing factors, the research aims to provide valuable insights that extend beyond mere statistical analysis. The motivations behind this endeavour lie in the imperative to comprehensively understand and address the risks associated with jaywalking, ultimately fostering a safer environment for pedestrians navigating urban crossroads. Aim: The primary aim of this paper is to assess and analyse the diverse factors influencing the frequency of jaywalking at signalized intersections, leveraging the capabilities of LiDAR sensors for safety applications. Through a meticulous examination of 1000 jaywalking events detected over a six-month period, the study aims to pinpoint highly correlated independent variables to the frequency of jaywalking events. These variables include traffic signal controller patterns, signal phases, vehicle-pedestrian conflicts, weather conditions, vehicle volume, walking patterns toward the median, pedestrian volume, and the unique jaywalker’s ratio. Employing advanced statistical regression models, the research seeks to identify optimal models and unravel key insights into the nuanced dynamics of jaywalking behaviour. The overarching goal is to equip decision-makers and transportation specialists with data-driven knowledge, enabling them to implement targeted safety measures that mitigate pedestrian risks and enhance safety infrastructure at critical urban crossroads. Results: The outcomes of the study, derived from the optimal Poisson regression model, yield crucial insights into the multifaceted nature of jaywalking events at signalized intersections. The morning and mid-day signal controller patterns exhibit a substantial decrease of 44.7% and 34.4%, respectively, compared to the evening (PM) pattern, shedding light on temporal nuances in jaywalking behaviour. Additionally, the severity of vehicle-pedestrian conflicts escalates proportionally with the number of jaywalkers, emphasizing the importance of addressing pedestrian flow in mitigating potential conflicts. Notably, the presence of vegetation in the median emerges as a significant factor, significantly increasing the frequency of jaywalking. These results contribute to a nuanced understanding of the intricate interplay between environmental, temporal, and behavioural factors in jaywalking incidents. Decision-makers and transportation specialists can leverage these findings to formulate targeted safety interventions, fostering a safer pedestrian experience at crucial urban crossroads
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