Land cover recognition using min-cut/max-flow segmentation and orthoimages
Resource information
Date of publication
December 2015
Resource Language
ISBN / Resource ID
AGRIS:LV2016000156
Pages
127-133
The geospatial information is significant for many socio-technical activities like urban planning, the prediction of natural hazards, the monitoring of land use, weather forecasting, cadastral surveys etc. It is possible to acquire geospatial information from a distance using remote sensing technologies, but remotely sensed images don’t have semantics without a previous recognition. The classification of geospatial information is expensive and time consuming process. The paper describes the automatic land cover recognition method, which is based on min-cut/max-flow segmentation. The raw data are orthoimages with a high resolution. The proposed method is tested and evaluated by Cohen’s kappa coefficient.