A Machine Learning Model for Improving Building Detection in Informal Areas: A Case Study of Greater Cairo

L. G. Taha, R. Ibrahim
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引用次数: 4

Abstract

Building detection in Ashwa’iyyat is a fundamental yet challenging problem, mainly because it requires the correct recovery of building footprints from images with high-object density and scene complexity.A classification model was proposed to integrate spectral, height and textural features. It was developed for the automatic detection of the rectangular, irregular structure and quite small size buildings or buildings which are close to each other but not adjoined. It is intended to improve the precision with which buildings are classified using scikit learn Python libraries and QGIS. WorldView-2 and Spot-5 imagery were combined using three image fusion techniques. The Grey-Level Co-occurrence Matrix was applied to determine which attributes are important in detecting and extracting buildings. The Normalized Digital Surface Model was also generated with 0.5-m resolution.The results demonstrated that when textural features of colour images were introduced as classifier input, the overall accuracy was improved in most cases. The results show that the proposed model was more accurate and efficient than the state-of-the-art methods and can be used effectively to extract the boundaries of small size buildings. The use of a classifier ensample is recommended for the extraction of buildings.
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改进非正规地区建筑物检测的机器学习模型——以大开罗为例
Ashwa'iyyat的建筑物检测是一个基本但具有挑战性的问题,主要是因为它需要从具有高对象密度和场景复杂性的图像中正确恢复建筑物足迹。提出了一种综合光谱、高度和纹理特征的分类模型。它是为自动检测矩形、不规则结构和非常小的建筑或相互靠近但不相邻的建筑而开发的。它旨在提高使用scikit学习Python库和QGIS对建筑物进行分类的精度。WorldView-2和Spot-5图像使用三种图像融合技术进行组合。应用灰度共生矩阵来确定哪些属性在建筑物检测和提取中是重要的。标准化数字表面模型也以0.5-m的分辨率生成。结果表明,当引入彩色图像的纹理特征作为分类器输入时,在大多数情况下,整体精度都得到了提高。结果表明,所提出的模型比现有的方法更准确、更有效,可以有效地用于提取小型建筑的边界。建议使用分类器样本提取建筑物。
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来源期刊
Geomatics and Environmental Engineering
Geomatics and Environmental Engineering Earth and Planetary Sciences-Computers in Earth Sciences
CiteScore
2.30
自引率
0.00%
发文量
27
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