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    •   UVaDOC Startseite
    • WISSENSCHAFTLICHE ARBEITEN
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    • Dpto. Producción Vegetal y Recursos Forestales
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    Por favor, use este identificador para citar o enlazar este ítem:https://uvadoc.uva.es/handle/10324/83958

    Título
    Combining low-density LiDAR and satellite images to discriminate species in mixed Mediterranean forest
    Autor
    Blázquez-Casado, Ángela
    Calama, Rafael
    Valbuena, Manuel
    Vergarechea, Marta
    Rodríguez, Francisco
    Año del Documento
    2019
    Documento Fuente
    Blázquez-Casado, Á., Calama, R., Valbuena, M., Vergarechea, M., & Rodríguez, F. (2019). Combining low-density LiDAR and satellite images to discriminate species in mixed Mediterranean forest. Annals of Forest Science, 76(2), 57.
    Zusammenfassung
    Context The discrimination of tree species at individual level in mixed Mediterranean forest based on remote sensing is a field which has gained greater importance. In these stands, the capacity to predict the quality and quantity of non-wood forest products is particularly important due to the very different goods the two species produce. Aims To assess the potential of using low-density airborne LiDAR data combined with high-resolution Pleiades images to discriminate two different pine species in mixed Mediterranean forest (Pinus pinea L. and Pinus pinaster Ait.) at individual tree level. Methods A Random Forest model was trained using plots from the pure stand dataset, determining which LiDAR and satellite variables allow us to obtain better discrimination between groups. The model constructed was then validated by classifying individuals in an independent set of pure and mixed stands. Results The model combining LiDAR and Pleiades data provided greater accuracy (83.3% and 63% in pure and mixed validation stands, respectively) than the models which only use one type of covariables. Conclusion The automatic crown delineation tool developed allows two very similar species in mixed Mediterranean conifer forest to be discriminated using continuous spatial information at the surface: Pleiades images and open source LiDAR data. This approach is easily applicable over large areas, enhancing the economic value of non-wood forest products and aiding forest managers to accurately predict production.
    ISSN
    1286-4560
    Revisión por pares
    SI
    DOI
    10.1007/s13595-019-0835-x
    Idioma
    spa
    URI
    https://uvadoc.uva.es/handle/10324/83958
    Tipo de versión
    info:eu-repo/semantics/publishedVersion
    Derechos
    openAccess
    Aparece en las colecciones
    • DEP57 - Artículos de revista [144]
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    Dateien zu dieser Ressource
    Nombre:
    16_2019_COMBINING LOW-DENSITY LIDAR AND SATELLITE IMAGES TO DISCRIMINATE SPECIES IN MIXED MEDITERRANEAN FOREST.pdf
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