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Unmanned aerial vehicles (UAV) for assessment of qualitative classification of Norway spruce in temperate forest stands

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    0492799 - ÚVGZ 2019 RIV GB eng J - Journal Article
    Brovkina, Olga - Cienciala, E. - Surovy, P. - Janata, P.
    Unmanned aerial vehicles (UAV) for assessment of qualitative classification of Norway spruce in temperate forest stands.
    Geo-spatial information science. Roč. 21, č. 1 (2018), s. 12-20. ISSN 1009-5020. E-ISSN 1993-5153
    R&D Projects: GA MŠMT(CZ) LO1415
    Institutional support: RVO:86652079
    Keywords : picea-abies * imagery * infestation * perspective * deposition * decline * climate * europe * growth * level * Remote sensing * species classification * spruce health indicator * Unmanned Aerial System (UAS)
    OECD category: Physical geography

    The study investigates the potential of UAV-based remote sensing technique for monitoring of Norway spruce health condition in the affected forest areas. The objectives are: (1) to test the applicability of UAV visible an near-infrared (VNIR) and geometrical data based on Z values of point dense cloud (PDC) raster to separate forest species and dead trees in the study area, (2) to explore the relationship between UAV VNIR data and individual spruce health indicators from field sampling, and (3) to explore the possibility of the qualitative classification of spruce health indicators. Analysis based on NDVI and PDC raster was successfully applied for separation of spruce and silver fir, and for identification of dead tree category. Separation between common beech and fir was distinguished by the object-oriented image analysis. NDVI was able to identify the presence of key indicators of spruce health, such as mechanical damage on stems and stem resin exudation linked to honey fungus infestation, while stem damage by peeling was identified at the significance margin. The results contributed to improving separation of coniferous (spruce and fir) tree species based on VNIR and PDC raster UAV data, and newly demonstrated the potential of NDVI for qualitative classification of spruce trees. The proposed methodology can be applicable for monitoring of spruce health condition in the local forest sites.
    Permanent Link: http://hdl.handle.net/11104/0286183

     
     
Number of the records: 1  

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