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<CreaDate>20160413</CreaDate>
<CreaTime>09015000</CreaTime>
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<idAbs>Image géoréférencée constituée à partir de traitements issus de l'acquisition de photographies aériennes (2012, Interatlas) représentant la couverture végétale et sa hauteur associée (en m) sur le territoire de Paris, de la Petite Couronne et d'une partie du reste de la Grande Couronne soit environ 4000 km².
La valeur d’un pixel raster représente la hauteur du bâtiment en mètre.
L’identification des zones avec une présence de végétation a été obtenue par traitements d’images proche infrarouge reposant sur la méthode de classification par le maximum de vraisemblance. Les hauteurs végétation ont été construites à partir d’une image de la différence MNE (Modèle Numérique d'Elévation) moins MNT (Modèle Numérique de Terrain) sur le résultat de la classification.
Pour plus de précision, vous pouvez consulter la fiche descriptive en suivant ce lien :
http://www.apur.org/open_data/HAUTEUR_VEGETATION_OD.pdf</idAbs>
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<keyword>apur_bd_environnement_reseau</keyword>
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<idPurp>Couverture végétale et sa hauteur associée</idPurp>
<idCredit>Apur, Interatlas</idCredit>
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<idCitation>
<resTitle>HAUTEUR_VEGETATION_2012</resTitle>
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