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<CreaDate>20191213</CreaDate>
<CreaTime>15071000</CreaTime>
<ArcGISFormat>1.0</ArcGISFormat>
<SyncOnce>TRUE</SyncOnce>
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<dataIdInfo>
<idAbs>This land cover dataset is part of the Connecticut's Changing Landscape project of the Center for Land Use Education and Research (CLEAR) at the University of Connecticut. It includes 12 classes of land cover derived from Landsat satellite imagery. Visit the website for more information and metadata. http://clear.uconn.edu/projects/landscape/
</idAbs>
<searchKeys>
<keyword>UConn</keyword>
<keyword>University of Connecticut</keyword>
<keyword>landcover</keyword>
<keyword>Land Cover</keyword>
<keyword>CLEAR</keyword>
<keyword>CT</keyword>
<keyword>Connecticut</keyword>
</searchKeys>
<idPurp>Land cover derived from 1985 satellite imagery for CT</idPurp>
<idCredit>University of Connecticut, Center for Land Use Education and Research (CLEAR)</idCredit>
<resConst>
<Consts>
<useLimit/>
</Consts>
</resConst>
<idCitation>
<resTitle>Landcover2006</resTitle>
</idCitation>
</dataIdInfo>
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