Mapping forest leaf dry matter content from hyperspectral data Abebe
نویسندگان
چکیده
Leaf dry matter content (LDMC) is a central vegetation property that plays an important role in assessments of ecosystem functions. In this study, LDMC was estimated from hyperspectral airborne image by inversion of the INFORM radiative transfer model using Continuous Wavelet Analysis (CWA). Stand parameters were collected for 33 sample plots during a field campaign in July 2013 in the Bavarian Forest National Park, Germany. The INFORM model was used to simulate the canopy reflectance of the study area and was then inverted by applying CWA in the shortwave infrared region. The results were evaluated using R and RMSE of the estimated and measured LDMC. Our results revealed significant correlations of six wavelet features with LDMC. The wavelet feature at 1741 nm (scale 5) was the strongly correlated feature in the studied spectral region to LDMC variation. The combination of all the identified
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