基于图像深度学习模型的行人道路弹性评估

IF 1 4区 工程技术 Q4 ENGINEERING, CIVIL Proceedings of the Institution of Civil Engineers-Municipal Engineer Pub Date : 2022-02-03 DOI:10.1680/jmuen.21.00037
Donggyun Ku, Minje Choi, Haram Oh, S. Shin, Seungjae Lee
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引用次数: 1

摘要

目前,行人路径的评价非常耗时。此外,即使步行条件差,残疾行人也不倾向于改变路线,从而降低了便利性和安全性。因此,快速识别和处理行人通道的状态是非常重要的。因此,本研究旨在快速识别和处理行人路径的条件,以达到高弹性。根据判别自动化计算弹性三角形,分析相应值。行人路径识别自动化应用卷积神经网络和“你只看一次”分析来识别人行道的路面状况和障碍物的存在。我们通过使用深度图像学习的识别算法定量分析与交通脆弱性相关的安全和经济问题。分析的结果是,如果只拍摄损坏的人行道照片,确定损坏程度的准确率应该达到94%。如果以首尔市为对象进行计算,步道改善带来的效益将达到412亿韩元。这项研究可以在当前人口快速老龄化的情况下确保行人的弹性和改善便利性。
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Assessment of the Resilience of Pedestrian Roads based on Image Deep Learning Models
Currently, the evaluation of pedestrian paths is very time consuming. Additionally, disabled pedestrians do not tend to change their routes, even if pedestrian conditions are poor, resulting in reduced convenience and safety. Therefore, it is important to identify and act on the statuses of pedestrian paths quickly. Therefore, this study aimed to identify and process the conditions of pedestrian paths quickly to achieve high resilience. A resilience triangle was calculated according to the discrimination automation to analyse the corresponding values. Pedestrian path discrimination automation applies convolutional neural networks and ‘you only look once’ analysis to identify the road surface conditions of walkways and the presence of obstacles. We quantitatively analyse the safety and economic problems associated with transportation vulnerabilities through discrimination algorithms using deep image learning. As a result of this analysis, it was determined that it should be possible to determine the extent of damage with 94% accuracy if only damaged sidewalk photos are captured. When this result was applied to Seoul, the benefits of improving pedestrian paths were quantitatively calculated to be KRW 41.2 billion. This study may secure pedestrian resilience and improve convenience in the current scenario of a rapidly aging population.
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来源期刊
CiteScore
3.70
自引率
0.00%
发文量
15
审稿时长
>12 weeks
期刊介绍: Municipal Engineer publishes international peer reviewed research, best practice, case study and project papers reports. The journal proudly enjoys an international readership and actively encourages international Panel members and authors. The journal covers the effect of civil engineering on local community such as technical issues, political interface and community participation, the sustainability agenda, cultural context, and the key dimensions of procurement, management and finance. This also includes public services, utilities, and transport. Research needs to be transferable and of interest to a wide international audience. Please ensure that municipal aspects are considered in all submissions. We are happy to consider research papers/reviews/briefing articles.
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