• My GeoNetwork catalogue
  •   Search
  •   Map
  •   Sign in

Landcover classification map of Germany 2016 based on Sentinel-2 data

This landcover map was produced as an intermediate result in the course of the project incora (Inwertsetzung von Copernicus-Daten für die Raumbeobachtung, mFUND Förderkennzeichen: 19F2079C) in cooperation with ILS (Institut für Landes- und Stadtentwicklungsforschung gGmbH) and BBSR (Bundesinstitut für Bau-, Stadt- und Raumforschung) funded by BMVI (Federal Ministry of Transport and Digital Infrastructure). The goal of incora is an analysis of settlement and infrastructure dynamics in Germany based on Copernicus Sentinel data.


This classification is based on a time-series of monthly averaged, atmospherically corrected Sentinel-2 tiles (MAJA L3A-WASP: https://geoservice.dlr.de/web/maps/sentinel2:l3a:wasp ; DLR (2019): Sentinel-2 MSI - Level 2A (MAJA-Tiles)- Germany). It consists of the following landcover classes:

10: forest

20: low vegetation

30: water

40: built-up

50: bare soil

60: agriculture


Potential training and validation areas were automatically extracted using spectral indices and their temporal variability from the Sentinel-2 data itself as well as the following auxiliary datasets:

- OpenStreetMap (Map data copyrighted OpenStreetMap contributors and available from htttps://www.openstreetmap.org)

- Copernicus HRL Imperviousness Status Map 2018 (© European Union, Copernicus Land Monitoring Service 2018, European Environment Agency (EEA))

- S2GLC Land Cover Map of Europe 2017 (Malinowski et al. 2020: Automated Production of Land Cover/Use Map of Europe Based on Sentinel-2 Imagery. Remote Sens. 2020, 12(21), 3523; https://doi.org/10.3390/rs 12213523)

- Germany NUTS administrative areas 1:250000 (© GeoBasis-DE / BKG 2020 / dl-de/by-2-0 / https://gdz.bkg.bund.de/index.php/default/nuts-gebiete-1-250-000-stand-31-12-nuts250-31-12.html )

- Contains modified Copernicus Sentinel data (2016), processed by mundialis


Processing was performed for blocks of federal states and individual maps were mosaicked afterwards.

For each class 100,000 pixels from the potential training areas were extracted as training data.


An exemplary validation of the classification results was perfomed for the federal state of North Rhine-Westphalia as its open data policy allows for direct access to official data to be used as reference. Rules to convert relevant ATKIS Basis-DLM object classes to the incora nomenclature were defined. Subsequently, 5.000 reference points were randomly sampled and their classification in each case visually examined and, if necessary, revised to obtain a robust reference data set. The comparison of this reference data set with the incora classification yielded the following results:


overall accuracy: 88.4%


class: user's accuracy / producer's accuracy (number of reference points n)

forest: 96.7% / 94.3% (1410)

low vegetation: 70.6% / 84.0% (844)

water: 98.5% / 94.2% (69)

built-up: 98.2% / 89.8% (983)

bare soil: 19.7% / 58.5% (41)

agriculture: 91.7% / 85.3% (1653)


Incora report with details on methods and results: pending

  • Identification
  • Distribution
  • Quality
  • Spatial rep.
  • Ref. system
  • Content
  • Portrayal
  • Metadata
  • Md. constraints
  • Md. maintenance
  • Schema info

Identification

Data identification

Citation

Date (Publication)
2020-12-01

Citation identifier

No information provided.
Citation identifier
dataset
Status
On going
Point of contact
  mundialis GmbH & Co. KG - ( )
Maintenance and update frequency
Irregular
Theme
  • Sentinel-2

  • Classification

  • Land Cover

  • mFUND

  • MAJA

  • Infrastuktur

  • Umwelt

  • Regionen und Städte

  • mfund-projekt:incora

  • mfund-fkz:19F2079C

  • incora

Place
  • Germany

GEMET - INSPIRE themes, version 1.0

  • Land cover

  • Land use

Legal constraints

Use limitation

None

Access constraints
Other restrictions
Use constraints
License
Other constraints
no limitations to public access
Other constraints

Data licence Germany - attribution - version 2.0 or later (DL-DE->BY-2.0) | Datenlizenz Deutschland - Namensnennung - Version 2.0 oder neuer

Other constraints

{ "id": "dl-by-de/2.0", "name": "Datenlizenz Deutschland Namensnennung 2.0", "url": " https://www.govdata.de/dl-de/by-2-0 ", "quelle": "Source: mundialis GmbH & Co. KG" }

Aggregate Information

Aggregate Datasetindentifier
9246503f-6adf-460b-a31e-73a649182d07
Association Type
Cross reference

Aggregate Information

Aggregate Datasetindentifier
36512b46-f3aa-4aa4-8281-7584ec46c813
Association Type
Cross reference

Aggregate Information

Aggregate Datasetindentifier
5ef8565b-ea72-4f34-985b-71ab41959230
Association Type
Cross reference
Spatial representation type
Grid
Distance
10  meters
Language
English
Character set
UTF8
Topic category
  • Geoscientific information

Extent

Description

Germany

Begin date
2016-01-01
End date
2016-12-31

Extent

N
S
E
W
thumbnail


 

Distribution

Distribution

Distribution format
  • GeoTIFF ( 1.0 )

Digital transfer options

OnLine resource
https://data.mundialis.de/geodata/lulc-germany/classification_2016/classification_map_germany_2016_v0_1.tif ( WWW:DOWNLOAD-1.0-http--download )
OnLine resource
https://data.mundialis.de/geodata/lulc-germany/classification_2016/LICENSE.html ( WWW:DOWNLOAD-1.0-http--download )
 

Quality

Data quality

Hierarchy level
Dataset

Conformance result

Citation

Date (Publication)
2010-12-08
Other citation details

http://data.europa.eu/eli/reg/2010/1089/2014-12- 31

Explanation

See specified reference

Pass
Yes

Lineage

Statement

derived from Sentinel-2 MSI - Level 3A-WASP

Process step

No information provided.
 

Ref. system

Reference system identifier
EPSG:32632 (UTM 32N)
 

Metadata

Metadata

File identifier
db130a09-fc2e-421d-95e2-1575e7c4b45c XML
Metadata language
English
Character set
UTF8
Hierarchy level
Dataset
Date stamp
2023-02-28T10:32:47
Metadata standard name

ISO 19115:2003/19139

Metadata standard version

1.0

Point of contact
  mundialis GmbH & Co. KG - ( )
 
 

Overviews

overview

Spatial extent

N
S
E
W
thumbnail


Keywords

Classification Infrastuktur Land Cover MAJA Regionen und Städte Sentinel-2 Umwelt incora mFUND mfund-fkz:19F2079C mfund-projekt:incora
GEMET - INSPIRE themes, version 1.0
Land cover Land use

Provided by

logo
Access to the portal
Read here the full details and access to the data.

Associated resources

Not available


  •   About
  •   Github
  •