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Extraction of built-up area using multi-sensor data-A case study based on Google earth engine in Zhejiang Province, China

机译:利用多传感器数据提取建筑面积 - 以浙江省谷歌地球发动机为例

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摘要

Accurate and up-to-date built-up area mapping is of great importance to the science community, decision-makers, and society. Therefore, satellite-based, built-up area (BUA) extraction at medium resolution with supervised classification has been widely carried out. However, the spectral confusion between BUA and bare land (BL) is the primary hindering factor for accurate BUA mapping over large regions. Here we propose a new methodology for the efficient BUA extraction using multi-sensor data under Google Earth Engine cloud computing platform. The proposed method mainly employs intra-annual satellite imagery for water and vegetation masks, and a random-forest machine learning classifier combined with auxiliary data to discriminate between BUA and BL. First, a vegetation mask and water mask are generated using NDVI (normalized differenced vegetation index) max in vegetation growth periods and the annual water-occurrence frequency. Second, to accurately extract BUA from unmasked pixels, consisting of BUA and BL, random-forest-based classification is conducted using multi-sensor features, including temperature, night-time light, backscattering, topography, optical spectra, and NDVI time-series metrics. This approach is applied in Zhejiang Province, China, and an overall accuracy of 92.5% is obtained, which is 3.4% higher than classification with spectral data only. For large-scale BUA mapping, it is feasible to enhance the performance of BUA mapping with multi-temporal and multi-sensor data, which takes full advantage of datasets available in Google Earth Engine.
机译:准确和最新的建筑区域绘图对科学界,决策者和社会非常重要。因此,卫星基于卫星的建筑面积(​​BUA)提取以监督分类的媒体分辨率已被广泛进行。然而,Bua和裸陆(BL)之间的光谱混淆是大区域精确的Bua映射的主要阻碍因素。在这里,我们在Google地球发动机云计算平台下使用多传感器数据提出了一种高效的BUA提取方法。所提出的方法主要用于水和植被面具的年度卫星图像,以及随机林机器学习分类器与辅助数据相结合,以区分BUA和BL。首先,使用NDVI(归一化差异植被指数)在植被生长期和年度水发生频率中产生植被掩模和水掩模。其次,为了精确提取来自揭露像素的Bua,由BUA和BL,基于随机林的分类组成,使用多传感器特征进行,包括温度,夜间光,反向散射,地形,光谱和NDVI时间序列指标。这种方法适用于中国浙江省,获得了92.5%的整体准确性,比仅具有光谱数据的分类3.4%。对于大规模的BUA映射,可以提高BUA映射与多时间和多传感器数据的性能,这是可以充分利用Google地球发动机中可用的数据集。

著录项

  • 来源
    《International journal of remote sensing》 |2021年第2期|389-404|共16页
  • 作者单位

    Zhejiang Univ Dept Land Management Hangzhou 310058 Peoples R China;

    Zhejiang Univ Dept Land Management Hangzhou 310058 Peoples R China;

    Zhejiang Univ Dept Land Management Hangzhou 310058 Peoples R China;

    Zhejiang Univ Dept Land Management Hangzhou 310058 Peoples R China;

    Zhejiang Univ Dept Land Management Hangzhou 310058 Peoples R China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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