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首页> 外文期刊>International journal of remote sensing >The influence of sampling density on geographically weighted regression: a case study using forest canopy height and optical data
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The influence of sampling density on geographically weighted regression: a case study using forest canopy height and optical data

机译:抽样密度对地理加权回归的影响:使用林冠层高度和光学数据的案例研究

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摘要

Geographically weighted regression (GWR) extends the conventional ordinary least squares (OLS) regression technique by considering spatial nonstationarity in variable relationships and allowing the use of spatially varying coefficients in linear models. Previous forest studies have demonstrated the better performance of GWR compared to OLS when calibrated and validated at sampled locations where field measurements are collected. However, the use of GWR for remote-sensing applications requires generating estimates and evaluating the model performance for the large image scene, not just for sampled locations. In this study, we introduce GWR to estimate forest canopy height using high spatial resolution Quickbird (QB) imagery and evaluate the influence of sampling density on GWR. We also examine four commonly used spatial analysis techniques - OLS, inverse distance weighting (IDW), ordinary kriging (OK) and cokriging (COK) - and compare their performance with that using GWR. Results show that (i) GWR outperformed OLS at all sampling densities; however, they produced similar results at low sampling densities, suggesting that GWR may not produce significantly better results than OLS in remote-sensing operational applications where only a small number of field data are collected, (ii) The performance of GWR was better than those of IDW, OK and COK at most sampling densities. Among the spatial interpolation techniques we examined, IDW was the best to estimate the canopy height at most densities, while COK outperformed OK only marginally and produced larger canopy height estimation errors than both IDW and GWR. (iii) GWR had the advantage of generating canopy height estimation maps with more accurate estimates than OLS, and it preserved patterns of geographic features better than IDW, OK or COK.
机译:地理加权回归(GWR)通过考虑变量关系中的空间非平稳性并允许在线性模型中使用空间变化的系数来扩展常规的普通最小二乘(OLS)回归技术。先前的森林研究表明,在采集野外测量的采样位置进行校准和验证后,与OLS相比,GWR的性能更好。但是,在遥感应用中使用GWR不仅需要针对大型图像场景(不仅针对采样位置)生成估计并评估模型性能。在这项研究中,我们引入GWR来使用高空间分辨率Quickbird(QB)图像估算森林冠层高度,并评估采样密度对GWR的影响。我们还研究了四种常用的空间分析技术-OLS,反距离权重(IDW),普通克里格法(OK)和协同克里格法(COK)-并将它们的性能与使用GWR的性能进行比较。结果表明:(i)在所有采样密度下,GWR均优于OLS;但是,他们在低采样密度下产生了相似的结果,这表明在仅采集少量现场数据的遥感业务应用中,GWR可能不会比OLS产生明显更好的结果;(ii)GWR的性能优于那些大多数采样密度下的IDW,OK和COK值。在我们研究的空间插值技术中,IDW是在大多数密度下估计冠层高度的最佳方法,而COK仅略微优于OK,并且比IDW和GWR产生更大的冠层高度估计误差。 (iii)GWR的优势是可以生成比OLS更准确的估计的冠层高度估计图,并且可以保留比IDW,OK或COK更好的地理特征模式。

著录项

  • 来源
    《International journal of remote sensing》 |2012年第10期|p.2909-2924|共16页
  • 作者单位

    Foothills Facility for Remote Sensing and GIScience, Department of Geography, University of Calgary, Calgary, AB, Canada T2N 1N4;

    Foothills Facility for Remote Sensing and GIScience, Department of Geography, University of Calgary, Calgary, AB, Canada T2N 1N4;

    Foothills Facility for Remote Sensing and GIScience, Department of Geography, University of Calgary, Calgary, AB, Canada T2N 1N4;

    Foothills Facility for Remote Sensing and GIScience, Department of Geography, University of Calgary, Calgary, AB, Canada T2N 1N4;

  • 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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