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首页> 外文期刊>Urban Forestry & Urban Greening >Assessing Machine Learning Based Supervised Classifiers For Built-Up Impervious Surface Area Extraction From Sentinel-2 Images
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Assessing Machine Learning Based Supervised Classifiers For Built-Up Impervious Surface Area Extraction From Sentinel-2 Images

机译:基于机器学习的机器学习监督分类器,用于哨声-2图像的内置不透水表面积提取

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摘要

Urban development concept requires a way forward towards smarter and easier urban development. But due to unintended urbanization, which contributes to increased impervious surface areas with several environmental issues. There was a requirement to assess and map the urban built-up impervious areas for solving various socio-environmental issues. This work attempts to evaluate and implement machine learning (ML) based supervised classifiers to semi-automate the process for extraction, quantification and mapping of urban built-up impervious areas. The work emphasised on the usage of freely available open-source high-resolution satellite datasets acquired from Sentinel-2 mission. Three different machine learning-based supervised classification techniques were evaluated for a better understanding of feature extraction methods along with suitable classifier for classification of urban impervious areas. It is a well-known phenomenon that an increase in the impervious surface contributes to declining of green cover. Also, a zonal analysis of extracted built-up impervious surfaces was conducted to understand the spatial configuration of the pilot study area. This zonal assessment of urban built-up impervious surfaces can be used as a worthy tool for better sustainable smart cities development. These can serve as a valuable resource for restoring the required urban green cover for better sustainable urban development.
机译:城市发展概念需要一种令人聪明,更容易城市发展的方式。但由于无意识的城市化,这有助于增加具有几个环境问题的不透水的表面积。有要求评估和绘制城市建立的不透水领域,以解决各种社会环境问题。这项工作试图评估和实施基于机器学习(ML)的监督分类器来半自动化城市建立不透水区域的提取,量化和定位过程。这项工作强调了从Sentinel-2任务中获取的自由式开源高分辨率卫星数据集的使用。评估了三种不同机器学习的监督分类技术,以更好地了解特征提取方法以及适合的分类器,用于城市不透水区域的分类。它是一种众所周知的现象,即不透水表面的增加有助于绿色覆盖率下降。而且,进行了提取的内置渗透表面的区域分析,以了解试验研究区域的空间配置。这座城市建筑不透水表面的区域评估可作为一个有价值的工具,以便更好地可持续智能城市开发。这些可以作为恢复所需城市绿色覆盖的宝贵资源,以获得更好的可持续城市发展。

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