Prediction of pedestrian crossing behaviour at unsignalized intersections using machine learning algorithms: analysis and comparison

IF 2.2 3区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Dungar Singh, Pritikana Das, Indrajit Ghosh
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引用次数: 0

Abstract

The primary safety hazard at unsignalized intersections, particularly in urban areas, is pedestrian-vehicle collisions. Due to its complexity and inattention, pedestrian crossing behaviour has a significant impact on their safety. This study introduces a novel framework to enhance pedestrian safety at unsignalized intersections by developing a predictive model of pedestrian crossing behaviour using machine learning algorithms. While accounting for crossing behaviour as the dependent variable and other independent variables, the analysis prioritises accuracy and internal validity. Important feature scores for the different algorithms were assessed. The model results revealed that the arrival first of a pedestrian or vehicle, pedestrian delay, vehicle speed, pedestrian speed, age, gender, traffic hour, and vehicle category are highly influencing variables for analysing pedestrian behaviour while crossing at unsignalized intersections. This study found that the prediction of pedestrian behaviour based on random forest, extreme gradient boosting and binary logit model achieved 81.72%, 77.19% and 74.95%, respectively. Algorithms, including k-nearest neighbours, artificial neural networks, and support vector machines, have varying classification performance at every step. The findings of this study may be used to support infrastructure-to-vehicle interactions, enabling vehicles to successfully negotiate rolling pedestrian behaviour and improving pedestrian safety.

Abstract Image

利用机器学习算法预测无信号灯交叉路口的行人过马路行为:分析与比较
在没有信号灯的交叉路口,尤其是在城市地区,主要的安全隐患是行人与车辆的碰撞。由于行人过马路的复杂性和注意力不集中,行人过马路的行为对其安全有很大影响。本研究引入了一个新颖的框架,通过使用机器学习算法开发行人过街行为预测模型,提高无信号交叉路口的行人安全。在考虑作为因变量的过马路行为和其他自变量的同时,分析优先考虑准确性和内部有效性。对不同算法的重要特征得分进行了评估。模型结果显示,行人或车辆的先到时间、行人延迟、车辆速度、行人速度、年龄、性别、交通时间和车辆类别是分析行人在无信号灯交叉路口过马路行为的高度影响变量。研究发现,基于随机森林、极梯度提升和二元 Logit 模型的行人行为预测率分别为 81.72%、77.19% 和 74.95%。包括 k 近邻、人工神经网络和支持向量机在内的算法在每一步的分类性能都不尽相同。这项研究的结果可用于支持基础设施与车辆之间的互动,使车辆能够成功协商行人的滚动行为,并改善行人安全。
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来源期刊
Journal on Multimodal User Interfaces
Journal on Multimodal User Interfaces COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-COMPUTER SCIENCE, CYBERNETICS
CiteScore
6.90
自引率
3.40%
发文量
12
审稿时长
>12 weeks
期刊介绍: The Journal of Multimodal User Interfaces publishes work in the design, implementation and evaluation of multimodal interfaces. Research in the domain of multimodal interaction is by its very essence a multidisciplinary area involving several fields including signal processing, human-machine interaction, computer science, cognitive science and ergonomics. This journal focuses on multimodal interfaces involving advanced modalities, several modalities and their fusion, user-centric design, usability and architectural considerations. Use cases and descriptions of specific application areas are welcome including for example e-learning, assistance, serious games, affective and social computing, interaction with avatars and robots.
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