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Land cover classification using multi-temporal MERIS vegetation indices

机译:利用多时相MERIS植被指数进行土地覆盖分类

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摘要

The spectral, spatial, and temporal resolutions of Envisat's Medium Resolution Imaging Spectrometer (MERIS) data are attractive for regional- to global-scale land cover mapping. Moreover, two novel and operational vegetation indices derived from MERIS data have considerable potential as discriminating variables in land cover classification. Here, the potential of these two vegetation indices (the MERIS global vegetation index (MGVI), MERIS terrestrial chlorophyll index (MTCI)) was evaluated for mapping eleven broad land cover classes in Wisconsin. Data acquired in the high and low chlorophyll seasons were used to increase inter-class separability. The two vegetation indices provided a higher degree of inter-class separability than data acquired in many of the individual MERIS spectral wavebands. The most accurate landcover map (73.2%) was derived from a classification of vegetation index-derived data with a support vector machine (SVM), and was more accurate than the corresponding map derived from a classification using the data acquired in the original spectral wavebands.
机译:Envisat的中分辨率成像光谱仪(MERIS)数据的光谱,空间和时间分辨率对于区域到全球范围的土地覆盖图都很有吸引力。此外,从MERIS数据中得出的两个新颖的和可操作的植被指数具有很大的潜力,可以作为区分土地覆被分类的变量。在这里,评估了这两个植被指数(MERIS全球植被指数(MGVI),MERIS陆地叶绿素指数(MTCI))的潜力,用于绘制威斯康星州的11种广泛的土地覆盖类别。高叶绿素季节和低叶绿素季节获得的数据用于增加类间的可分离性。与在许多单独的MERIS光谱波段中获得的数据相比,这两个植被指数提供了更高的类间可分离性。最准确的土地覆盖图(73.2%)是通过使用支持向量机(SVM)对植被指数得出的数据进行分类得出的,并且比使用原始光谱波段中采集的数据从分类得出的相应地图更准确。

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