利用随机森林算法从高分辨率谷歌地球图像中自动提取建筑物足迹:一种基于特征的方法

Rahisha Thottolil, U. Kumar
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引用次数: 0

摘要

绘制城市地区的建筑结构是许多城市研究的基础。高分辨率卫星图像和机器学习算法通常用于半自动和自动建筑物检测。本研究探索了分类算法和高分辨率谷歌地球图像的应用,以检测具有各种形状,大小和建筑材料的异质建筑结构的复杂城市地区的建筑物。该模型将RGB图像转换为灰度图像,然后推导若干滤波轮廓以捕获空间和光谱特征向量。差分形态轮廓(dmp)由连续的形态轮廓构建,以识别图像中可能存在的建筑物的结构信息。因此,形态学建筑指数是通过平均dmp来计算的,其中包括由于阴影的存在而被错误标记的屋顶。采用全局Otsu阈值法减少误标建筑物的数量。最后,基于计算得到的特征向量,使用随机森林算法对建筑物进行分类。在去除噪声后,使用参考地面真实度的评价指标对最终建筑地图的质量进行评估,结果显示,与RF模型相比,最终建筑地图的质量提高了4.4%(从81.2%提高到85.62%),同时还揭示了建筑物的详细结构信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Building Footprint Extraction using Random Forest Algorithm from High Resolution Google Earth Images: A Feature-Based Approach
Mapping building structures in urban areas are fundamental for many urban studies. High-resolution satellite images and machine learning algorithms are often used for semi-automatic and automatic building detection. This study explores the utility of classification algorithm and high-resolution Google Earth images to detect buildings from a complex urban area having heterogeneous building structures of various shapes, sizes and construction materials. The proposed model converts the RGB images to grayscale followed by derivation of several filtered profiles to capture spatial and spectral feature vectors. Differential morphological profiles (DMPs) were constructed from consecutive morphological profiles to identify the structural information of probable buildings present in the image. Consequently, morphological building index was computed by averaging the DMPs that included mislabeled rooftops due to the presence of shadows. Global Otsu thresholding was used to reduce the number of mislabeled buildings. Finally, Random Forest algorithm was used for the classification of buildings based on the computed feature vectors. After noise removal, the quality of final building maps were assessed using evaluation metrics with reference to the ground truth which showed 4.4% improvement (from 81.2 to 85.62 %) over RF model while also revealing the detailed structural information of buildings.
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