一种基于原始卫星图像的非洲城市交通热点制图混合方法方案

Yilak A Kebede
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引用次数: 1

摘要

-道路交通死亡对低收入和中等收入国家的影响尤为严重。这项研究提供了一种方法,可以帮助发展中国家的城市利用有限的资源,利用卫星数据洞察来控制事故易发地点。所提出的方法是一种混合的方法,来自运输和新兴的机器学习学科。在第一步中,使用加权严重性指数(WSI)标记事故点,其中包含可能影响事故发生的14个风险因素。然后,训练计算机使用从WSI分析中获得的标记地理信息数据来寻找黑点。这种前沿方法被称为卷积神经网络(cnn)的迁移学习,它是从以前的训练中获得的知识,用于识别与新位置相似的问题。该方法是一种廉价且可靠的黑点识别解决方案,可从免费提供的卫星图像和开源数据中提取数据见解。关键词:道路交通事故;热点;映射;卫星图像
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A Mixed-Method Proposal for Traffic Hotspots Mapping in African Cities using Raw Satellite Imagery
-Road traffic fatalities disproportionately affect lowand middle-income countries. This research provides a method that helps cities in developing countries to use their limited resource to control accident-prone locations with satellite data insights. The proposed method is a mixed approach from both transport and the emerging machine learning discipline. In the first step, accident spots labeled using the Weighted Severity Index (WSI) with 14 risk factors that potentially influence the occurrence of an accident. Then, the computer is trained to look for blackspots using the labeled geoinformation data obtained from the WSI analysis. This cuttingedge method is called transfer learning with Convolutional Neural Networks (CNNs), which is the knowledge gained from previous training uses to identify a similar problem to a new location. The method is an inexpensive and reliable blackspot identifying solutions that extract data insights from freely available satellite imagery and open-source data. Keywords—road accident, hotspots; mapping; satellite imagery
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