利用深度学习和卫星图像对东非城市规划的经济区域进行分类

IF 1 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC
Davy K. Uwizera;Charles Ruranga;Patrick McSharry
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引用次数: 0

摘要

监测和评估东非经济地区的分布,如低收入和高收入社区,通常依赖于使用结构化数据和传统的调查方法来收集信息,如问卷调查、访谈和实地访问。这些类型的调查速度慢,成本高,而且容易出现人为错误。随着数字革命,每天都会生成大量非结构化数据,这些数据可能包含许多经济变量的有用代理数据。在这项研究中,我们专注于在东非应用的卫星图像数据。近年来,东非城市通过建设新的基础设施和建设创新经济区而快速发展。此外,随着城市人口的增加,城市向多个方向扩张,影响了经济活动地区的总体分布。对这些地区的自动检测和分类可用于为土地使用等一系列政策提供信息,也有助于政策执行监测。另一方面,特定城市不同经济区域的分布可以为收入分配和贫困指标等各种经济发展变量提供指标。在这项研究中,我们将深度学习技术应用于卫星图像,对特定区域的各种经济区域的分布进行分类和评估,以进行城市规划。通过将性能与各种最先进的模型进行比较,结果表明,所提出的深度学习技术产生了优异的性能,f1得分为99%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classifying Economic Areas for Urban Planning using Deep Learning and Satellite Imagery in East Africa
Monitoring and assessing the distribution of economic areas in East Africa such as low and high income neighborhoods, has typically relied on the use of structured data and traditional survey approaches for collecting information such as questionnaires, interviews and field visits. These types of surveys are slow, costly and prone to human error. With the digital revolution, a lot of unstructured data is generated daily that is likely to contain useful proxy data for many economic variables. In this research we focus on satellite imagery data with applications in East Africa. Recently East African cities have been developing at a fast pace by building new infrastructure and constructing innovative economic zones. Moreover with increased urban population, cities have been expanding in multiple directions affecting the overall distribution of areas with economic activity. Automatic detection and classification of these areas could be used to inform a number of policies such as land usage and could also assist with policy enforcement monitoring. On the other hand, the distribution of different economic areas in a specific city could provide proxies for various economic development variables such as income distribution and poverty metrics. In this research, we apply deep learning techniques to satellite imagery to classify and assess the distribution of various economic areas of a specific region for urban planning. By benchmarking performance against various state-of-art models, results show that the proposed deep learning techniques yielded superior performance with an f1-score of 99%.
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来源期刊
SAIEE Africa Research Journal
SAIEE Africa Research Journal ENGINEERING, ELECTRICAL & ELECTRONIC-
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