根据街景图像估计道路网沿线的城市噪音

IF 4.3 1区 地球科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Jing Huang, Teng Fei, Yuhao Kang, Jun Li, Ziyu Liu, Guofeng Wu
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The ResNet captures meaningful patterns from the input data, and the output probability vectors are then fed into a Random-Forest regression algorithm to quantitatively estimate the noise in decibels for different road segments. The MAE and RMSE of the DCNN-RF model are 2.01 and 2.71, respectively. Additionally, we employ a gradient-weighted Class Active Mapping approach to visually interpret our deep learning model and explore the significant elements in streetscapes that contribute to the model's estimations. Our proposed framework facilitates low-cost and fine-scale road traffic noise estimations and sheds light on how auditory information could be inferred from street imagery, which may benefit practices in geography and urban planning.Keywords: Road traffic noisestreet view imagerydeep learningbuild environmenturban planning AcknowledgmentThe authors would like to thank Urli for the valuable advice provided during the initial stages of the experiment and Mr. Mengze Gao for designing and 3D-printing the enclosure for the data acquisition device. Thanks to the financial support from the National Natural Science Foundation of China [42271476]; the Wuhan University 351 Talent Program, 2020; the State Key Laboratory of Resources and Environmental Information System [2023OPEN007] and the Guangdong Science and Technology Strategic Innovation Fund [2020B1212030009].Disclosure statementNo potential conflict of interest was reported by the author(s).Data and codes availability statementThe original in-situ road traffic noise data with geographic coordinates collected by the experimental vehicle using our portable device, as well as the road traffic noise estimation model and some sample street view images used for demonstration are available at https://github.com/kellyhuang313/traffic-noise-estimation. Instructions for executing the code are provided in the README.txt.Notes1 https://www.openstreetmap.org/Additional informationFundingThis work was supported by the National Natural Science Foundation of China [42271476]; the Wuhan University 351 Talent Program, 2020; and the Guangdong Science and Technology Strategic Innovation Fund [2020B1212030009]. This work was also supported by State Key Laboratory of Resources and Environmental Information System [2023OPEN007].Notes on contributorsJing HuangJing Huang is a Master’s student at the School of Resource and Environment Sciences, Wuhan University, China. Her research focuses on the analysis of spatio-temporal data in urban geography. 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引用次数: 0

摘要

摘要道路交通噪声是检测城市测深环境质量和减轻城市交通噪声污染的重要手段。然而,现有的估计模型通常对特定交通状况的适用性有限,而所需的参数可能无法在全市范围内收集。本文提出了一种数据驱动的基于街景图像的道路声信息测量方法。具体来说,我们利用配备便携式车辆的硬件进行现场噪声采集,并使用深度学习模型ResNet从街景图像中学习与道路交通噪声密切相关的高级视觉特征。ResNet从输入数据中捕获有意义的模式,然后将输出概率向量输入随机森林回归算法,以定量估计不同路段的分贝噪声。DCNN-RF模型的MAE和RMSE分别为2.01和2.71。此外,我们采用梯度加权类主动映射方法来直观地解释我们的深度学习模型,并探索街景中有助于模型估计的重要元素。我们提出的框架有助于低成本和精细尺度的道路交通噪声估计,并阐明了如何从街道图像中推断听觉信息,这可能有利于地理和城市规划的实践。关键词:道路交通噪声街景图像深度学习建筑环境城市规划致谢致谢致谢致谢致谢致谢致谢致谢致谢致谢致谢致谢致谢致谢致谢致谢致谢致谢致谢致谢致谢致谢致谢致谢致谢致谢致谢致谢致谢国家自然科学基金资助[42271476];武汉大学351人才计划(2020);资源与环境信息系统国家重点实验室[2023OPEN007]和广东省科技战略创新基金[2020B1212030009]。披露声明作者未报告潜在的利益冲突。数据和代码可用性声明实验车辆使用我们的便携式设备收集的原始地理坐标的现场道路交通噪声数据,以及用于演示的道路交通噪声估计模型和一些示例街景图像可在https://github.com/kellyhuang313/traffic-noise-estimation上获得。在README.txt中提供了执行代码的说明。注1 https://www.openstreetmap.org/Additional信息资助国家自然科学基金[42271476];武汉大学351人才计划(2020);广东省科技战略创新基金[2020B1212030009]。资源与环境信息系统国家重点实验室[2023OPEN007]资助。作者简介黄静,武汉大学资源与环境科学学院硕士研究生。主要研究方向为城市地理时空数据分析。她的贡献包括开发交通噪声估计模型,算法实现,进行案例研究,撰写论文稿件。滕飞,武汉大学资源与环境科学学院地图学与地理信息科学副教授,主要从事城市地理大数据与生态遥感研究。他为现场交通噪声数据采集的便携式设备的构思,概念化,设计和手稿修改做出了贡献。康宇豪,南卡罗来纳大学地理系GISense实验室助理教授。主要研究方向为以人为本的地理空间数据科学、地理信息科学、GeoAI、城市视觉智能等。他对方法的发展,以及对手稿的审查和编辑做出了贡献。李俊毕业于中国武汉大学资源与环境科学学院。他的研究方向是地理空间分析。他对街景图像和交通噪声数据的数据处理做出了贡献。刘子玉毕业于武汉大学资源与环境科学学院。她最近的工作重点是利用街景图像准确估计道路PV产量。在这项工作中,她对街景图像的数据收集和整理做出了贡献。吴国峰,中国深圳大学城市信息系教授。主要研究方向为遥感在自然资源与生态环境中的应用。他是这篇论文发表的共同负责人。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimating urban noise along road network from street view imagery
AbstractEstimating road traffic noise is essential for examining the quality of sounding environment and mitigating such a non-negligible pollutant in urban areas. However, existing estimated models often have limited applicability to specific traffic conditions, while the required parameters may not be readily available for city-wide collection. This paper proposes a data-driven approach for measuring road-level acoustic information of traffic with street view imagery. Specifically, we utilize portable vehicle-equipped hardware for in-situ noise acquisition and employ a deep learning model ResNet to learn high-level visual features from street view images that are closely associated with road traffic noise. The ResNet captures meaningful patterns from the input data, and the output probability vectors are then fed into a Random-Forest regression algorithm to quantitatively estimate the noise in decibels for different road segments. The MAE and RMSE of the DCNN-RF model are 2.01 and 2.71, respectively. Additionally, we employ a gradient-weighted Class Active Mapping approach to visually interpret our deep learning model and explore the significant elements in streetscapes that contribute to the model's estimations. Our proposed framework facilitates low-cost and fine-scale road traffic noise estimations and sheds light on how auditory information could be inferred from street imagery, which may benefit practices in geography and urban planning.Keywords: Road traffic noisestreet view imagerydeep learningbuild environmenturban planning AcknowledgmentThe authors would like to thank Urli for the valuable advice provided during the initial stages of the experiment and Mr. Mengze Gao for designing and 3D-printing the enclosure for the data acquisition device. Thanks to the financial support from the National Natural Science Foundation of China [42271476]; the Wuhan University 351 Talent Program, 2020; the State Key Laboratory of Resources and Environmental Information System [2023OPEN007] and the Guangdong Science and Technology Strategic Innovation Fund [2020B1212030009].Disclosure statementNo potential conflict of interest was reported by the author(s).Data and codes availability statementThe original in-situ road traffic noise data with geographic coordinates collected by the experimental vehicle using our portable device, as well as the road traffic noise estimation model and some sample street view images used for demonstration are available at https://github.com/kellyhuang313/traffic-noise-estimation. Instructions for executing the code are provided in the README.txt.Notes1 https://www.openstreetmap.org/Additional informationFundingThis work was supported by the National Natural Science Foundation of China [42271476]; the Wuhan University 351 Talent Program, 2020; and the Guangdong Science and Technology Strategic Innovation Fund [2020B1212030009]. This work was also supported by State Key Laboratory of Resources and Environmental Information System [2023OPEN007].Notes on contributorsJing HuangJing Huang is a Master’s student at the School of Resource and Environment Sciences, Wuhan University, China. Her research focuses on the analysis of spatio-temporal data in urban geography. Her contributions to the paper include developing traffic noise estimation model, algorithm implementation, conducting case studies, and manuscript writing of this paper.Teng FeiTeng Fei is an Associate Professor of Cartography and GIScience at the School of Resources and Environment Science, Wuhan University, specializing in the study of urban geographic big data and ecological remote sensing. He contributed to the ideation, conceptualizing, the design of a portable device for in-situ traffic noise data acquisition and manuscript revision.Yuhao KangYuhao Kang is an assistant professor in GIScience directing the GISense Lab at the Department of Geography, University of South Carolina. His research interests include Human-centered Geospatial Data Science, GIScience, GeoAI, and Urban Visual Intelligence. He contributed to the development of the methodology, as well as the review and editing of this manuscript.Jun LiJun Li graduated from the School of Resource and Environment Sciences, Wuhan University, China. His research is oriented toward geospatial analysis. He contributed to the data processing of street view imagery and traffic noise data.Ziyu LiuZiyu Liu graduated from the School of Resource and Environment Sciences, Wuhan University, China. Her recent work focuses on the use of accurate road PV production estimation from street view image. She contributed to the data collection and curation of the street view images in this work.Guofeng WuGuofeng Wu is a Professor at the Department of Urban Informatics, Shenzhen University, China. His research focuses on the application of remote sensing to natural resources and ecological environments. He is co-responsible for the presentation of this paper.
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来源期刊
CiteScore
11.00
自引率
7.00%
发文量
81
审稿时长
9 months
期刊介绍: International Journal of Geographical Information Science provides a forum for the exchange of original ideas, approaches, methods and experiences in the rapidly growing field of geographical information science (GIScience). It is intended to interest those who research fundamental and computational issues of geographic information, as well as issues related to the design, implementation and use of geographical information for monitoring, prediction and decision making. Published research covers innovations in GIScience and novel applications of GIScience in natural resources, social systems and the built environment, as well as relevant developments in computer science, cartography, surveying, geography and engineering in both developed and developing countries.
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