Assessing the color status and daylight chromaticity of road signs through machine learning approaches

IF 3.2 Q3 TRANSPORTATION IATSS Research Pub Date : 2023-10-01 DOI:10.1016/j.iatssr.2023.06.003
Roxan Saleh , Hasan Fleyeh , Moudud Alam , Arend Hintze
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Abstract

The color of road signs is a critical aspect of road safety, as it helps drivers quickly and accurately identify and respond to these signs. Properly colored road signs improve visibility during the day and make it easier for drivers to make informed decisions while driving. In order to ensure the safety and efficiency of road traffic, it is essential to maintain the appropriate color level of road signs.

The objective of this study was to analyze the color status and daylight chromaticity of in-use road signs using supervised machine learning models, and to explore the correlation between road sign's age and daylight chromaticity. Three algorithms were employed: Random Forest (RF), Support Vector Machine (SVM), and Artificial Neural Network (ANN). The data used in this study was collected from road signs that were in-use on roads in Sweden.

The study employed classification models to assess the color status (accepted or rejected) of the road signs based on minimum acceptable color levels according to standards, and regression models to predict the daylight chromaticity values. The correlation between road sign's age and daylight chromaticity was explored through regression analysis. Daylight chromaticity describes the color quality of road signs in daylight, that is expressed in terms of X and Y chromaticity coordinates.

The study revealed a linear relationship between the road sign's age and daylight chromaticity for blue, green, red, and white sheeting, but not for yellow. The lifespan of red signs was estimated to be around 12 years, much shorter than the estimated lifespans of yellow, green, blue, and white sheeting, which are 35, 42, 45, and 75 years, respectively.

The supervised machine learning models successfully assessed the color status of the road signs and predicted the daylight chromaticity values using the three algorithms. The results of this study showed that the ANN classification and ANN regression models achieved high accuracy of 81% and R2 of 97%, respectively. The RF and SVM models also performed well, with accuracy values of 74% and 79% and R2 ranging from 59% to 92%. The findings demonstrate the potential of machine learning to effectively predict the status and daylight chromaticity of road signs and their impact on road safety in the Swedish context.

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通过机器学习方法评估路标的颜色状态和日光色度
道路标志的颜色是道路安全的一个关键方面,因为它可以帮助司机快速准确地识别和响应这些标志。适当的彩色道路标志可以提高白天的能见度,使司机在驾驶时更容易做出明智的决定。为了保证道路交通的安全和效率,保持适当的道路标志颜色水平是必不可少的。本研究的目的是利用监督机器学习模型分析在用道路标志的颜色状态和日光色度,并探讨道路标志的年龄与日光色度之间的相关性。采用随机森林(RF)、支持向量机(SVM)和人工神经网络(ANN)三种算法。本研究中使用的数据是从瑞典道路上正在使用的道路标志中收集的。本研究采用分类模型,以标准规定的最低可接受颜色等级为基础,评估道路标志的颜色状态(可接受或不接受),并采用回归模型预测日光色度值。通过回归分析探讨了道路标志年龄与日光色度的相关性。日光色度描述道路标志在日光下的色彩质量,用X和Y色度坐标表示。研究表明,对于蓝色、绿色、红色和白色的路标,其使用年限与日光色度之间存在线性关系,但对于黄色的路标则不存在线性关系。据估计,红色标识的使用寿命约为12年,远远短于黄色、绿色、蓝色和白色标识的使用寿命(分别为35年、42年、45年和75年)。监督机器学习模型成功地评估了道路标志的颜色状态,并使用这三种算法预测了日光色度值。本研究结果表明,ANN分类和ANN回归模型的准确率分别达到81%和97%。RF和SVM模型也表现良好,准确率分别为74%和79%,R2为59% ~ 92%。研究结果表明,机器学习可以有效地预测瑞典道路标志的状态和日光色度,以及它们对道路安全的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
IATSS Research
IATSS Research TRANSPORTATION-
CiteScore
6.40
自引率
6.20%
发文量
44
审稿时长
42 weeks
期刊介绍: First published in 1977 as an international journal sponsored by the International Association of Traffic and Safety Sciences, IATSS Research has contributed to the dissemination of interdisciplinary wisdom on ideal mobility, particularly in Asia. IATSS Research is an international refereed journal providing a platform for the exchange of scientific findings on transportation and safety across a wide range of academic fields, with particular emphasis on the links between scientific findings and practice in society and cultural contexts. IATSS Research welcomes submission of original research articles and reviews that satisfy the following conditions: 1.Relevant to transportation and safety, and the multiple impacts of transportation systems on security, human health, and the environment. 2.Contains important policy and practical implications based on scientific evidence in the applicable academic field. In addition to welcoming general submissions, IATSS Research occasionally plans and publishes special feature sections and special issues composed of invited articles addressing specific topics.
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