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  • Ispitivanje položajne točno...
    Elezović, Alma; Topoljak, Jusuf; Mulahusić, Admir; Tuno, Nedim

    Šumarski list, 02/2017, Letnik: 141, Številka: 1-2
    Journal Article, Paper

    Poznavanje položajne točnosti geoprostornih informacija o šumama, dobivenih interpretacijom satelitskih snimaka, ima veliko značenje. Posljedice odluka koje su temeljene na podacima nedovoljne ili nepoznate kvalitete mogu biti vrlo negativne. U ovome radu istražena je točnost zatvorenih linijskih objekata kojima su predstavljene granice šumskog pokrova. Implementacijom postupka segmentacije snimke korištenjem svih multispektralnih kanala te klasifikacijom tako definiranih segmenata pomoću posebnih pravila, efikasno su izdvojene površine pod šumama. Empirijskom analizom temeljenom na usporedbi testnog i referentnog linijskog sadržaja, pokazano je da kartografska generalizacija doprinosi poboljšanju točnosti granica šuma, te da adekvatna obrada podataka daljinskih istraživanja srednje prostorne rezolucije može rezultirati vektorskim podacima zadovoljavajuće kvalitete. Knowledge about positional accuracy of forest geospatial information, obtained by interpretation of satellite imagery, is of great significance. The consequences of the decisions that are based on data with insufficient or unknown quality could be very negative. This paper investigates the accuracy of closed linear shapes that represented boundaries of forest cover. Forest areas are effectively extracted from Landsat image by implementing the process of multiresolution image segmentation (figure 4), using all bands. Multispectral classification of defined segments was performed by special rules. The results of object-oriented classification showed that an overall accuracy from 99 reference points was better than 90 % (table 1), which can be considered as a very good result. The number of forest polygons, obtained by satellite imagery classification, was reduced by 37 times by cartographic aggregation (figure 5). The Polynomial Approximation with Exponential Kernel (PAEK) method was used for cartographic smoothing of the forest polygons, which smoothes lines in relation to a softening tolerance (tolerances from 30 m to 180 m were used in this research) (figure 6). The positional accuracy assessment of the boundary of forest areas, based on procedure of comparing a tested lines to a reference lines, showed that the best results were obtained by PAEK smoothing with 150 m and 180 m tolerances (CMAS = 49 m, according to STANAG 2215) (tables 2 and 3, figure 8). The findings of this empirical research showed that cartographic generalization contributes to improvement of the forest boundaries accuracy, as well as the appropriate processing of the medium spatial resolution remotely sensed data can result in satisfactory quality of vector data.