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  • This dataset contains information about the administrative "Arrondissements" of Cameroon. The dataset is produced by the Institut National de Cartographie (INC) and the descriptions are made on the basis of topographic maps (INC background) at a scale of 1:200 000. This layer represents a global view of the regions and does not correspond to official boundaries. There is no legal validation process for this data. The dataset was edited by FAO-CSI for topology/geometry validation, schema and coding system conformance to SALB-UN specifications. International borders were updated/validated against the official/recognized borders from the United Nations Geospatial Information Section.

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    The Global Administrative Areas (GADM) 3.6 vector dataset series is the world coverage for administrative units at different administrative levels. Delimiting a total of 386,735 boundaries, GADM open data project delivers distinct datasets representing administrative boundaries for each country and its respective political subdivisions. The dataset series is comprised of the six administrative levels global datasets for: National (level 0), State/province/equivalent (level 1), County/district/equivalent (level 2), Commune/municipality/equivalent (level 3) and smaller Levels 4 and 5. Attributes for Level 0 comprise country name in English and ISO 3166-1 alpha3 coding. Administrative units associated with attribute information include official names in Latin and non-Latin scripts, variant names, administrative type in local and English. Administrative Level 4 is available for 20 countries and Level 5 for France and Rwanda.

  • This dataset represents the administrative regions of Cameroon. Boundaries of territorial areas gathering several administrative divisions, placed under the authority of Governors. The dataset was originally produced by the Institut National de Cartographie (INC) and the descriptions are made on the basis of topographic maps (INC background) at a scale of 1:200 000. This layer represents a global view of the regions and does not correspond to official boundaries. There is no legal validation process for this data. The dataset was edited by FAO-CSI for topology/geometry validation, schema and coding system conformance to SALB-UN specifications. International borders were updated/validated against the official/recognized borders from the United Nations Geospatial Information Section.

  • This represents the "départments" administrative divisions of Cameroon. The dataset is originally produced by the Institut national de cartographie (INC) and the descriptions are made on the basis of topographic maps (INC background) at a scale of 1:200 000. This layer represents a global view of the regions and does not correspond to official boundaries. There is no legal validation process for this data. The dataset was edited by FAO-CSI for topology/geometry validation, schema and coding system conformance to SALB-UN specifications. International borders were updated/validated against the official/recognized borders from the United Nations Geospatial Information Section.

  • Categories    

    The Global Administrative Areas (GADM) 3.6 vector dataset series is the world coverage for administrative units at different administrative levels. Delimiting a total of 386,735 boundaries, GADM open data project delivers distinct datasets representing administrative boundaries for each country and its respective political subdivisions. The dataset series is comprised of the six administrative levels global datasets for: National (level 0), State/province/equivalent (level 1), County/district/equivalent (level 2), Commune/municipality/equivalent (level 3) and smaller Levels 4 and 5. Attributes for Level 0 comprise country name in English and ISO 3166-1 alpha3 coding. Administrative units associated with attribute information include official names in Latin and non-Latin scripts, variant names, administrative type in local and English. Administrative Level 4 is available for 20 countries and Level 5 for France and Rwanda.