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<CreaDate>20190204</CreaDate>
<CreaTime>14564300</CreaTime>
<ArcGISFormat>1.0</ArcGISFormat>
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<idAbs>Based on Sentinel-2A imageries from 2016, the map shows a detailed classification of Germany's arable land, distinguishing 19 land-use classes. "Forests", "Waters", "Urban" and "Other Vegetation" are predefined classes and were not classified in this study.</idAbs>
<searchKeys>
<keyword>Crops</keyword>
<keyword>Landuse</keyword>
<keyword>Classification</keyword>
<keyword>Germany</keyword>
<keyword>2018</keyword>
<keyword>Preidl</keyword>
</searchKeys>
<idPurp>Based on Sentinel-2A imageries from 2016, the map shows a detailed classification of Germany's arable land, distinguishing 19 land-use classes. "Forests", "Waters", "Urban" and "Other Vegetation" are predefined classes and were not classified in this</idPurp>
<idCredit/>
<resConst>
<Consts>
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<idCitation>
<resTitle>PreidlS_Land_Use_Class_2019</resTitle>
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