Title :
Enhanced Gap Fraction Extraction From Hemispherical Photography
Author :
Diaz, Gaston M. ; Lencinas, Jose D.
Author_Institution :
Consejo Nac. de Investig. Cientificas y Tec., Buenos Aires, Argentina
Abstract :
Canopy structure can be estimated using gap fraction (GF) data, which can be directly measured with hemispherical photography. However, GF data accuracy is affected by sunlit canopy, multiple scattering, vignetting, blooming, and chromatic aberration. Here, we present an algorithm to classify hemispherical photography, whose aim is to reduce errors in the extraction of GF data. The algorithm, which was implemented in free software, uses color transformations, fuzzy logic, and object-based image analysis. The results suggest that color and texture, rather than only brightness, can be used to extract GF data.
Keywords :
fuzzy logic; geophysical image processing; image classification; image colour analysis; image texture; photography; GF data estimation; blooming; canopy structure; chromatic aberration; color transformation; enhanced gap fraction extraction; fuzzy logic; hemispherical photography classification; image texture; multiple scattering; object-based image analysis; vignetting; Algorithm design and analysis; Brightness; Image color analysis; Image segmentation; Photography; Scattering; Standards; Fish-eye photography; forestry; fuzzy logic; image classification; image texture analysis;
Journal_Title :
Geoscience and Remote Sensing Letters, IEEE
DOI :
10.1109/LGRS.2015.2425931