策略性城市规划的机器学习

S. N. Odaudu, I. J. Umoh, M. B. Mu’azu, E. A. Adedokun
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引用次数: 0

摘要

数据挖掘是适应人口爆炸的现代城市住区发展战略规划的重要组成部分。发展中国家正在迅速城市化,提供了农村地区所缺乏的发展和机会。需要分析诸如卫星图像等有关城市发展的数据,以确定进一步发展或开辟新住区的可能性。提出了一种基于二值亚像素和特征的水体和植被分类方法。在这项工作中,对图像进行数据预处理、特征提取,并使用机器学习分类方法对数据进行分析,以检测支持城市扩张或新定居点发展的区域。该方法的准确率为88.93%,RMSE为0.06%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning for Strategic Urban Planning
Data mining is an important part of strategic planning for the development of modern urban settlement with capacities to accommodate population explosion. Developing countries are fast becoming urbanized giving the developments and opportunities that are lacking in rural areas. Data regarding urban development such as satellite image need to be analysed to ascertain the possibilities for further development or opening up of new settlements. This work presents a binary sub-pixel and feature based method of classification to detect water bodies and vegetation in earth observatory images. In this work, the images were subjected data pre-processing, feature extraction, and analysed the data using machine learning classification method to detection regions that support urban expansion or development of new settlement. The proposed method achieved 88.93% accuracy and 0.06% RMSE.
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