Title :
Extraction of red edge optical parameters from Hyperion data for estimation of forest leaf area index
Author :
Pu, Ruiliang ; Gong, Peng ; Biging, Greg S. ; Larrieu, Mirta Rosa
Author_Institution :
Center for Assessment & Monitoring of Forest & Environ. Resources, Univ. of California, Berkeley, CA, USA
fDate :
4/1/2003 12:00:00 AM
Abstract :
A correlation analysis was conducted between forest leaf area index (LAI) and two red edge parameters: red edge position (REP) and red well position (RWP), extracted from reflectance image retrieved from Hyperion data. Field spectrometer data and LAI measurements were collected within two days after the Earth Observing One satellite passed over the study site in the Patagonia region of Argentina. The two red edge parameters were extracted with four approaches: four-point interpolation, polynomial fitting, Lagrangian technique, and inverted-Gaussian (IG) modeling. Experimental results indicate that the four-point approach is the most practical and suitable method for extracting the two red edge parameters from Hyperion data because only four bands and a simple interpolation computation are needed. The polynomial fitting approach is a direct method and has its practical value if hyperspectral data are available. However, it requires more computation time. The Lagrangian method is applicable only if the first derivative spectra are available; thus, it is not suitable to multispectral remote sensing. The IG approach needs further testing and refinement for Hyperion data.
Keywords :
forestry; interpolation; polynomials; vegetation mapping; Argentina; Hyperion data; LAI; Lagrangian technique; Patagonia; REP; RWP; correlation analysis; field spectrometer data; forest leaf area index; four-point interpolation; inverted-Gaussian modeling; polynomial fitting; red edge optical parameters; red edge position; red well position; reflectance image; Data mining; Image analysis; Image retrieval; Information retrieval; Interpolation; Lagrangian functions; Optical sensors; Polynomials; Reflectivity; Spectroscopy;
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
DOI :
10.1109/TGRS.2003.813555