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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Automatic extraction of built-up area from ZY3 multi-view satellite imagery: Analysis of 45 global cities
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Automatic extraction of built-up area from ZY3 multi-view satellite imagery: Analysis of 45 global cities

机译:从ZY3多视图卫星图像自动提取内置区域:45个全球城市分析

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Accurate delineation of global built-up area (BUA) is fundamental to a better understanding of human development and the impacts on global environmental change. Existing global datasets of human settlement were mostly generated at medium and coarse spatial resolutions, including BUA and other impervious surfaces. With multiple high-resolution satellite constellations now available (e.g., ZiYuan-3 (ZY3), SPOT-5/6/7, Cartosat-1/2, and WorldView-2/3), identifying the global BUA explicitly from the complex landscapes becomes possible. In this study, a novel method was proposed for automated extraction of BUA at the global scale, by fusing a series of building features. Specifically, two planar features, the Morphological Building Index (MBI) and Harris corner detector, were employed to characterize the structure and corner attributes of buildings. Moreover, two multiangular built-up indices (MABIs), i.e., Ratio Multi-angular Built-up Index (RMABI) and Normalized Difference Multi-angular Built-up Index (NDMABI), were proposed to represent the vertical properties of buildings based on multi-view images, which can further complement the planar features. 45 global cities were selected to validate the performance of the proposed method with images acquired by the ZY3 satellite constellation. The results show that the fusion of MBI and Harris corner can achieve satisfactory accuracy, i.e., 91.12%, 88.85%, 82.82% and 0.85, for the average overall accuracy (OA), user's accuracy (UA), producer's accuracy (PA), and F1-score, respectively, for all the test cities. After fusing the MABIs with the planar features, the average OA, UA, PA and F values of the final results were 92.00%, 86.20%, 89.14% and 0.87 for the RMABI, and 91.83%, 85.51%, 89.62% and 0.87 for the NDMABI, respectively. In particular, addition of the MABIs can further reduce the omission errors where medium/high rise buildings with low local contrast exist. We compared our results with two existing state-of-the-art g
机译:准确描绘全球建筑面积(​​BUA)是对人类发展的更好理解和对全球环境变革的影响的基础。人类沉降的现有全球数据集主要在中等和粗糙的空间分辨率下产生,包括BUA和其他不透水的表面。现在有多个高分辨率卫星星座(例如,Ziyuan-3(ZY3),Spot-5 / 6/7,Cartosat-1/2和WorldView-2/3),明确地从复杂的景观中识别全球BUA成为可能。在这项研究中,通过融合一系列建筑功能,提出了一种用于自动提取BUA的新方法。具体而言,使用两个平面特征,形态学建筑指数(MBI)和哈里斯角探测器,以表征建筑物的结构和角落属性。此外,提出了两个多边的内置指数(MABI),即比率多角度建立索引(RMABI)和归一化差异多角度建立索引(NDMABI),以表示基于的建筑物的垂直特性多视图图像,可以进一步补充平面功能。选择了45个全球城市以验证所提出的方法的表现,其中ZY3卫星星座获得的图像。结果表明,MBI和哈里斯角的融合可以实现令人满意的精度,即91.12%,88.85%,82.82%和0.85,用于平均整体精度(OA),用户的准确性(UA),生产者的准确性(PA),和F1分别用于所有测试城市。在用平面特征融合MABI后,最终结果的平均OA,UA,PA和F值为RMABI的92.00%,86.20%,89.14%和0.87,91.83%,85.51%,89.62%和0.87分别是ndmabi。特别地,添加Mabis可以进一步减少存在具有低局部对比度的中/高层建筑物的省略误差。我们将结果与两个现有最先进的g进行了比较

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