Artículo
Model-based local thresholding for canopy hemispherical photography
Fecha de publicación:
07/2018
Editorial:
National Research Council Canada-NRC Research Press
Revista:
Canadian Journal Of Forest Research
ISSN:
0045-5067
Idioma:
Inglés
Tipo de recurso:
Artículo publicado
Clasificación temática:
Resumen
Canopy hemispherical photography (HP) is widely used to estimate forest structural variables. To achieve good results with HP, a classification algorithm is needed to produce binary images to accurately estimate the gap fraction. Our aim was to develop a local thresholding method for binarizing carefully acquired hemispherical photographs. The method was implemented in the R package “caiman”. Working with photographs of artificial structures and using a linear model, our method turns the cumbersome problem of finding the optimal threshold value into a simpler one, which is estimating the digital number (DN) of the sky. Using hemispherical photographs of a deciduous forest, we compared our method with several standard and state-of-the-art binarization techniques. Our method was as accurate as the best-tested binarization techniques, regardless of the exposure, as long as it was between 0 and 2 stops over the open sky auto-exposure. Moreover, our method did not require knowing the exact relative exposure. Intending to balance accuracy and practicality, we mapped the sky DN using the values extracted from gaps. However, we discussed whether a more accurate but less practical way to map sky DN could provide, along with our method, a new benchmark.
Palabras clave:
CLUMPING INDEX
,
EXPOSURE
,
GAP FRACTION
,
LEAF AREA INDEX
,
LOCAL THRESHOLDING
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Identificadores
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Articulos(SEDE CENTRAL)
Articulos de SEDE CENTRAL
Articulos de SEDE CENTRAL
Citación
Díaz, Gastón Mauro; Lencinas, José Daniel; Model-based local thresholding for canopy hemispherical photography; National Research Council Canada-NRC Research Press; Canadian Journal Of Forest Research; 48; 10; 7-2018; 1204-1216
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