Publication | Open Access
Semi-Automated Classification of Landform Elements in Armenia Based on SRTM DEM using K-Means Unsupervised Classification
38
Citations
49
References
2017
Year
EngineeringGeomorphologyLand UseSrtm DemSoil MappingQuantitative GeomorphologyLand CoverEarth ScienceSocial SciencesImage AnalysisPattern RecognitionSemi-automated ClassificationSoil ClassificationGeographyAbstract Land ElementsLand Cover MapData ClassificationCivil EngineeringRemote SensingCover MappingLandform ElementsApplied Geomorphology
Abstract Land elements have been used as basic landform descriptors in many science disciplines, including soil mapping, vegetation mapping, and landscape ecology. This paper presents a semi-automatic method based on k-means unsupervised classification to analyze geomorphometric features as landform elements in Armenia. First, several data layers were derived from DEM: elevation, slope, profile curvature, plan curvature and flow path length. Then, k-means algorithm has been used for classifying landform elements based on these morphomertic parameters. The classification has seven landform classes. Overall, landform classification is performed in the form of a three-level hierarchical scheme. The resulting map reflects the general topography and landform character of Armenia.
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