利用街景图像和深度学习技术研究建筑环境对共享单车项目站点周围自行车事故的影响:街景特征的调节作用

IF 5.7 2区 工程技术 Q1 ECONOMICS
Junehyung Jeon, Ayoung Woo
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引用次数: 0

摘要

随着共享单车项目(BSP)在全球范围内的兴起,规划师和交通专家对共享单车项目的快速发展是否能确保自行车安全表示担忧。尽管对鼓励使用自行车的建筑环境进行了大量研究,但对 BSP 站点周围的街景环境是否会影响自行车事故的了解却很有限。为了弥补这一空白,我们研究了 BSP 站点周围各种建筑环境与自行车事故之间的关系,尤其关注综合街景的调节作用。通过语义分割和 k-means 聚类估算出的街景环境被用于两级负二叉回归模型,以阐明街道和站点级环境如何影响不同类型的自行车事故。研究结果表明,在车速较高的道路、有交通设施的街道、靠近公共交通基础设施的街道以及特定街景类型的街道上,自行车发生事故的可能性会增加。尤其是绿洲街道和开阔天空道路等街景特征,有助于减轻自行车网络和人行横道等交通设施对自行车安全的负面影响。这项研究有助于制定全面的战略和指导方针,以改造建筑环境,提高交通安全,从而促进城市自行车运动的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The effects of built environments on bicycle accidents around bike-sharing program stations using street view images and deep learning techniques: The moderating role of streetscape features

With the global rise of bike-sharing programs (BSP), planners and traffic experts have raised concerns as to whether the rapid growth of BSP ensures cycling safety. Despite numerous studies on built environments encouraging bike usage, there is limited knowledge whether streetscape environments around BSP stations affect bicycle accidents. We address this gap by investigating the relationships between various built environments and bicycle accidents around BSP stations, with a particular focus on the moderating effects of comprehensive streetscapes. Streetscape environments, estimated through semantic segmentation and k-means clustering, were used in two-level negative binomial regression models to clarify how street- and station-level environments affect different types of bicycle accidents. The findings indicate increased crash likelihoods on higher-speed roads, streets with traffic facilities, in proximity to public transportation infrastructure, and specific streetscape types. In particular, streetscape features like green oasis streets and open-sky roadways positively contribute to mitigating the negative effects of traffic facilities, such as bike networks and crosswalks, on cycling safety. This study aids in developing comprehensive strategies and guidelines to retrofit built environments for better traffic safety and thereby promote urban cycling.

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来源期刊
CiteScore
11.50
自引率
11.50%
发文量
197
期刊介绍: A major resurgence has occurred in transport geography in the wake of political and policy changes, huge transport infrastructure projects and responses to urban traffic congestion. The Journal of Transport Geography provides a central focus for developments in this rapidly expanding sub-discipline.
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