Land cover is a spatial information of great relevance for a variety of models for estimating sediment yield and to measure the potential of th'/> Decision tree and minimum sample density in land cover mapping
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Decision tree and minimum sample density in land cover mapping

机译:土地覆被制图中的决策树和最小样本密度

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> face="Verdana, Arial, Helvetica, sans-serif" size="2">Land cover is a spatial information of great relevance for a variety of models for estimating sediment yield and to measure the potential of the landscape carbon sequestration. The classification of land cover by the supervised method requires training areas, these areas must be representative of each class of land cover. For the classification decision tree (DT) algorithm, the complexity of DT, results in different values of accuracies for thematic maps. Thus, the objective of this study was to estimate the minimum sample density in a DT model which would allow to discriminate land cover classes, evaluate the size of the generated DT model, as well as, identify the more difficult land cover class to be mapped. Satellite images from RESOURCESAT-1as well as spectral indices were used in the study. The minimum sample density varied between 0.15 and 0.30% of the total area for each class, this sampling interval allowed better results than 80% for kappa index. The smallest grouping of observations in the same terminal leaf was 45 observations. In this study the most difficult land use classes to be mapped were forest and rice crops due to spectral similarity of shaded forests with irrigated rice crops.
机译:> face =“ Verdana,Arial,Helvetica,sans-serif” size =“ 2”>土地覆盖是与各种模型相关的空间信息,这些模型可用于估算沉积物产量和测量景观潜力碳汇。通过监督方法对土地覆被进行分类需要培训区域,这些区域必须代表每个类别的土地覆被。对于分类决策树(DT)算法,DT的复杂性导致专题图的精度值不同。因此,本研究的目的是估计DT模型中的最小样本密度,这将能够区分土地覆被类别,评估生成的DT模型的大小以及确定要绘制的难度更大的土地覆被类别。这项研究使用了来自RESOURCESAT-1的卫星图像以及光谱指数。每个类别的最小样本密度在总面积的0.15%至0.30%之间变化,此采样间隔的结果优于 kappa 指数的80%。同一顶叶中观察值的最小分组为45个观察值。在这项研究中,由于阴影林与灌溉稻作物的光谱相似性,最难绘制的土地利用类别是森林和稻谷作物。

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