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Multimodal, multitemporal, and multisource global data fusion for local climate zones classification based on ensemble learning

机译:基于集合学习的局部气候区分类的多模式,多因素和多源全球数据融合

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This paper presents a new methodology for classification of local climate zones based on ensemble learning techniques. Landsat-8 data and open street map data are used to extract spectral-spatial features, including spectral reflectance, spectral indexes, and morphological profiles fed to subsequent classification methods as inputs. Canonical correlation forests and rotation forests are used for the classification step. The final classification map is generated by majority voting on different classification maps obtained by the two classifiers using multiple training subsets. The proposed method achieved an overall accuracy of 74.94% and a kappa coefficient of 0.71 in the 2017 IEEE GRSS Data Fusion Contest.
机译:本文介绍了基于集合学习技术的局部气候区分类的新方法。 LANDSAT-8数据和开放街道地图数据用于提取光谱空间特征,包括馈送到随后的分类方法的光谱反射率,光谱索引和形态学配置。规范相关森林和旋转林用于分类步骤。最终的分类图是由使用多个训练子集获得的两个分类器获得的不同分类映射的多数投票产生。该方法在2017年IEEE GRS数据融合比赛中实现了74.94 %的总精度为74.94 %,kappa系数为0.71。

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