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Contextual land-cover classification: incorporating spatial dependence in land-cover classification models using random forests and the Getis statistic

机译:上下文土地覆盖分类:使用随机森林和Getis统计量将空间依赖性纳入土地覆盖分类模型

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摘要

Land-cover characterization of large heterogeneous landscapes is challenging because of the confusion caused by high intra-class variability and heterogeneous landscape artefacts. Neighbourhood context can be used to supplement spectral information, and a novel way of incorporating spatial dependence in a heterogeneous region is tested here using an ensemble learning technique called random forests and a measure of local spatial dependence called the Getis statistic. The overall Kappa accuracy of the random forest classifier that used a combination of spectral and local spatial (Getis) variables at three different neighbourhood sizes (3×3,7×7, and 11×11) ranged from 0.85 to 0.92. This accuracy was higher than that of a non-spatial random forest classifier having an overall Kappa accuracy of 0.78, which was run using the spectral variables only. This study demonstrated that the use of the Getis statistic with different neighbourhood sizes leads to substantial increase in per class classification accuracy of heterogeneous land-cover categories.
机译:大型异质景观的土地覆盖特征描述具有挑战性,因为高类内变异性和异质景观伪像引起了混乱。邻域上下文可用于补充光谱信息,此处使用称为随机森林的集成学习技术和称为Getis统计的局部空间依赖度量来测试在异质区域中纳入空间依赖的新方法。在三个不同邻域大小(3×3、7×7和11×11)上使用频谱和局部空间(Getis)变量的组合的随机森林分类器的总体Kappa准确性在0.85至0.92之间。该准确性高于仅使用光谱变量运行的整体Kappa准确性为0.78的非空间随机森林分类器的准确性。这项研究表明,使用具有不同邻域大小的Getis统计量会大大提高异类土地覆盖类别的每类分类准确性。

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  • 来源
    《Remote sensing letters》 |2010年第1期|p.45-54|共10页
  • 作者

    B. GHIMIRE; J. ROGAN; J. MILLE;

  • 作者单位

    Graduate School of Geography, Clark University, Worcester, MA 01610, USA;

    Graduate School of Geography, Clark University, Worcester, MA 01610, USA;

    Department of Geography and the Environment, University of Texas, Austin, TX 78712, USA;

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