从plimias图像中提取建筑物足迹的方法评价

Q3 Social Sciences
L. G. Taha, R. Ibrahim
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引用次数: 2

摘要

码头地区代表了进入埃及的官方新门户,该地区的基础设施发展正在迅速进行。本研究的目的是通过自动提取plims卫星图像来获取建筑数据。这是由于城市规划和旅游发展需要有效地绘制地图和更新地理数据库。它将随机森林算法的性能与其他分类器(如最大似然、支持向量机和反向传播神经网络)在卫星图像中出现的组织良好的建筑物上进行比较。随后将图像分为两类:建筑物和非建筑物。此外,利用基本的形态学操作,如打开和关闭,增强分类图像的平滑性和连通性。随机森林、最大似然、支持向量机和反向传播的总体准确率分别为97%、95%、93%和92%。结果表明,随机森林算法是最优算法,最大似然算法次之,反向传播神经网络算法效果最差。对检测建筑物的完整性和正确性进行了评价。实验证明,这四种分类方法可以有效准确地从高分辨率图像中检测出100%的建筑物。鼓励使用机器学习算法从非常高分辨率的图像中进行对象检测和提取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessment of Approaches for the Extraction of Building Footprints from Pléiades Images
The Marina area represents an official new gateway of entry to Egypt and the development of infrastructure is proceeding rapidly in this region. The objective of this research is to obtain building data by means of automated extraction from Pléiades satellite images. This is due to the need for efficient mapping and updating of geodatabases for urban planning and touristic development. It compares the performance of random forest algorithm to other classifiers like maximum likelihood, support vector machines, and backpropagation neural networks over the well-organized buildings which appeared in the satellite images. Images were subsequently classified into two classes: buildings and non-buildings. In addition, basic morphological operations such as opening and closing were used to enhance the smoothness and connectedness of the classified imagery.The overall accuracy for random forest, maximum likelihood, support vector machines, and backpropagation were 97%, 95%, 93% and 92% respectively. It was found that random forest was the best option, followed by maximum likelihood, while the least effective was the backpropagation neural network. The completeness and correctness of the detected buildings were evaluated. Experiments confirmed that the four classification methods can effectively and accurately detect 100% of buildings from very high-resolution images. It is encouraged to use machine learning algorithms for object detection and extraction from very high-resolution images.
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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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