GIS-driven classification of land use using IKONOS data and a core national spatial information database

  • PDF / 658,636 Bytes
  • 9 Pages / 595.276 x 790.866 pts Page_size
  • 74 Downloads / 182 Views

DOWNLOAD

REPORT


ORIGINAL PAPER

GIS-driven classification of land use using IKONOS data and a core national spatial information database Ammatzia Peled & Michael Gilichinsky

Received: 18 August 2011 / Accepted: 14 January 2013 / Published online: 12 February 2013 # Società Italiana di Fotogrammetria e Topografia (SIFET) 2013

Abstract Integration of spatial information embedded in GIS databases with remotely sensed data is one of the most challenging issues in modern geo-information science. The broad availability of up-to-date satellite imagery and the rapid development of image analysis techniques have shifted the classification of remotely sensed data into an increasingly automated procedure. Compared to traditional mapping, automatic land-use classification has the advantages of lower cost, area-wide coverage, and the possibility of frequent updating. One approach to automatic classification is the GIS-driven methodology that integrates multispectral properties of satellite imagery with thematic and metric geospatial information by applying the theory of evidence. The practical implementation of this theory allows for the combination of evidence from mutually exclusive data sources, such as satellite imagery, digital air-photographs, or in situ spectral data and ancillary data extracted from the very same spatial data bases that are to be updated. The objective of this study was to perform and analyze a GIS-driven classification of land use based on IKONOS satellite data and the Israeli National GIS core spatial information database. The image objects (polygons) were classified using the land-use classes that are inherent in the National GIS. The knowledge about these land-use classes was formalized by intensity and shape parameters, captured from IKONOS spectral bands and the GIS spatial data as was defined in the land-use layer of the Israeli National GIS. The classification polygons were assigned with the probability of occurrence with one of A. Peled (*) : M. Gilichinsky Department of Geography and Environmental Studies, University of Haifa, Haifa, Israel e-mail: [email protected] Present Address: M. Gilichinsky Samaria and Jordan Rift R&D Center, Ariel 40700, Israel e-mail: [email protected]

analyzed training class types. A final classification was carried out by the Dempster’s rule of evidence combination. The classification results (overall accuracy 82.7, kappa=0.71) provide an indication of the utility of formalized knowledge for classification of land use. The proposed method could be useful for quality assessment and automatic updating of existing spatial databases. Keywords Land use . GIS-driven classification . Evidential reasoning

Introduction Sustainable land management relies on analyses derived from GIS databases for decision support and strategic planning (Hese and Schmullius 2009; Aydöner and Maktav 2009). Land-use data stored in GIS databases are usually subjected to an intensive change processes that diminish their relevance. Also, as some definitions are based on semantic descriptions, these data