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<idPurp>Occupation du sol vectorielle à grande échelle de 2022 sur le territoire de la Métropole Aix-Marseille Provence découpée par commune.
Nomenclature de 96 postes sur 4 niveaux compatibles avec la nomenclature CRIGE PACA et un niveau 5 interprété sur la couverture pour les postes hors NAF + 3. Projection : Lambert 93 (conforme au RGE)</idPurp>
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