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Finer Resolution Land-Cover Mapping Using Multiple Classifiers and Multisource Remotely Sensed Data in the Heihe River Basin

机译:黑河流域使用多个分类器和多源遥感数据的精细分辨率土地覆盖制图

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摘要

Land-cover datasets are crucial for research on eco-hydrological processes and earth system modeling. Many land-cover datasets have been derived from remote-sensing data. However, their spatial resolutions are usually low and their classification accuracy is not high enough, which are not well suited to the needs of land surface modeling. Consequently, a comprehensive method for monthly land-cover classification in the Heihe river basin (HRB) with high spatial resolution is developed. Moreover, the major crops in the HRB are also distinguished. The proposed method integrates multiple classifiers and multisource data. Three types of data including MODIS, HJ-1/CCD, and Landsat/TM and Google Earth images are used. Compared to single classifier, multiple classifiers including thresholding, support vector machine (SVM), object-based method, and time-series analysis are integrated to improve the accuracy of classification. All the data and classifiers are organized using a decision tree. Monthly land-cover maps of the HRB in 2013 with 30-m spatial resolution are made. A comprehensive validation shows great improvement in the accuracy. First, a visual comparison of the land-cover maps using the proposed method and standard SVM method shows the classification differences and the advantages of the proposed method. The confusion matrix is used to evaluate the classification accuracy, showing an overall classification accuracy of over 90% in the HRB, which is quite higher than previous approaches. Furthermore, a ground campaign was performed to evaluate the accuracy of crop classification and an overall accuracy of 84.09% for the crop classification was achieved.
机译:土地覆盖物数据集对于生态水文过程和地球系统建模的研究至关重要。许多土地覆盖的数据集都来自遥感数据。但是,它们的空间分辨率通常很低,并且分类精度还不够高,不能很好地满足地表建模的需求。因此,开发了一种具有高空间分辨率的黑河流域(HRB)月度土地覆被分类的综合方法。此外,HRB的主要农作物也很出色。所提出的方法集成了多个分类器和多源数据。使用了三种类型的数据,包括MODIS,HJ-1 / CCD和Landsat / TM以及Google Earth图像。与单一分类器相比,集成了包括阈值,支持向量机(SVM),基于对象的方法和时间序列分析在内的多个分类器,以提高分类的准确性。所有数据和分类器均使用决策树进行组织。制作了2013年HRB月度土地覆盖图,其空间分辨率为30 m。全面的验证显示出准确性的极大提高。首先,使用所提方法和标准支持向量机方法对土地覆盖图进行视觉比较,显示了所提方法的分类差异和优点。混淆矩阵用于评估分类准确性,显示HRB中的整体分类准确性超过90%,这比以前的方法要高得多。此外,开展了一场地面运动以评估农作物分类的准确性,农作物分类的总体准确性达到84.09%。

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