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首页> 外文期刊>International journal of digital Earth >Integrating global land cover products for improved forest cover characterization: an application in North America
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Integrating global land cover products for improved forest cover characterization: an application in North America

机译:集成全球土地覆盖产品以改善森林覆盖特征:在北美的应用

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摘要

Six widely used coarse-resolution global land cover data-sets - Global Land Cover Characterization (GLCC), Global Land Cover 2000 (GLC2000), GlobCover land cover product (GlobCover), MODIS land cover product (MODIS LC), the University of Maryland land cover product (UMD LC), and the MODIS Vegetation Continuous Fields tree cover layer (MODIS VCF) disagree substantially in their estimates of forest cover. Employing a regression tree model trained on higher-resolution, Landsat-based data, these multisource multiresolution maps were integrated for an improved characterization of forest cover over North America. Evaluated using a withheld test sample, the integrated percent forest cover (IPFC) data-set has a root mean square error of 11.75% - substantially better than the 17.37% of GLCC, 17.61% of GLC2000, 17.96% of GlobCover, 15.23% of MODIS LC, 19.25% of MODIS VCF, and 15.15% of UMD LC, respectively. Although demonstrated for forest, this approach based on integration of multiple products has potential for improved characterization of other land cover types as well.
机译:六个广泛使用的粗分辨率全球土地覆盖数据集-全球土地覆盖特征(GLCC),全球土地覆盖2000(GLC2000),GlobCover土地覆盖产品(GlobCover),MODIS土地覆盖产品(MODIS LC),马里兰大学土地覆被产品(UMD LC)和MODIS植被连续田树覆盖层(MODIS VCF)在森林覆盖率估计上存在很大分歧。这些多源多分辨率地图采用在基于Landsat的高分辨率数据上训练的回归树模型,对这些多源多分辨率地图进行了整合,以改善北美森林覆盖率的特征。使用保留的测试样本进行评估,综合森林覆盖率(IPFC)数据集的均方根误差为11.75%-大大优于GLCC的17.37%,GLC2000的17.61%,GlobCover的17.96%,15.23% MODIS LC,MODIS VCF的19.25%和UMD LC的15.15%。尽管已针对森林进行了演示,但这种基于多种产品集成的方法也具有改善其他土地覆盖类型特征的潜力。

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