Artículo
Ecological condition indicators for dry forest: Forest structure variables estimation with NDVI texture metrics and SAR variables
Alvarez, Maria Paula; Bellis, Laura Marisa
; Arcamone, Julieta Rocío
; Silvetti, Luna Emilce
; Gavier Pizarro, Gregorio
; Arcamone, Julieta Rocío
; Silvetti, Luna Emilce
; Gavier Pizarro, Gregorio
Fecha de publicación:
01/2025
Editorial:
Elsevier
Revista:
Remote Sensing Applications: Society and Environment
ISSN:
2352-9385
Idioma:
Inglés
Tipo de recurso:
Artículo publicado
Clasificación temática:
Resumen
The ecological condition of forest ecosystems is degraded. Limited prior research in vegetationhas focused on monitoring ecological condition levels in dry forest at fine scale. We proposeda novel approach to obtain accurate indicators of the ecological condition of the ChacoSerrano forest (Córdoba, Argentina) by estimating forest structure variables (canopy cover (),diameter breast height (_), number of woody individuals ( ) and two first axesof a principal component analysis (1 and 2)) as a measure of forest degradation. Toachieve this, first the correlation with two complementary groups of remote sensing deriveddata (texture metrics over Normalised difference vegetation index and SAR-derived data) wasexplored. Then, General linear models (GLM) were constructed using the most correlatedremote sensing derived variables with forest structure variables as predictor variables. Thebest estimation was obtained to (2=0.58, rmse=14,5%), followed by (2=0.37,rmse=156.6) and (2=0.22, rmse=14.6), with an spatial arrangement consistent with fieldobservations. Moreover, estimation was more accurate than those at regional and globalscale, and highlights the importance of developing local models in areas that exhibit highecological, geological, and human heterogeneity. In addition, other forest variables could also beevaluated, like floristic composition or others associated with functioning. Results offer valuableinsights for developing management strategies suitable for each condition, and for future studiesregarding the relationship of the mentioned condition and associated natural and anthropicfactors.
Palabras clave:
SAR
,
DRY FOREST
,
INDICATORS
,
L AND C BANDS
Archivos asociados
Licencia
Identificadores
Colecciones
Articulos(CCT - CORDOBA)
Articulos de CTRO.CIENTIFICO TECNOL.CONICET - CORDOBA
Articulos de CTRO.CIENTIFICO TECNOL.CONICET - CORDOBA
Citación
Alvarez, Maria Paula; Bellis, Laura Marisa; Arcamone, Julieta Rocío; Silvetti, Luna Emilce; Gavier Pizarro, Gregorio; Ecological condition indicators for dry forest: Forest structure variables estimation with NDVI texture metrics and SAR variables; Elsevier; Remote Sensing Applications: Society and Environment; 37; 1-2025; 1-12
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