A main limitation of pixel-based vegetation indices or reflectance values for estimating above-ground biomass is that they do not consider the mixed spectral components on the earth's surface covered by a pixel. In this research, we decomposed mixed reflectance in each pixel before developing models to achieve higher accuracy in above-ground biomass estimation. Spectral mixture analysis was applied to decompose the mixed spectral components of Landsat-7 ETM+ imagery into fractional images. Afterwards, regression models were developed by integrating training data and fraction images. The results showed that the spectral mixture analysis improved the accuracy of biomass estimation of Dipterocarp forests. When applied to the independent valida...
Fennica 41(3): 441–456. One of the most common applications of remote sensing in forestry is the pro...
Fractional vegetation cover (FVC), or green vegetation fraction, is an important parameter for chara...
Forest biochemical and biophysical variables and their spatial and temporal distribution are essenti...
A main limitation of pixel-based vegetation indices or reflectance values for estimating above-groun...
Integration of multisensor data provides the opportunity to explore benefits emanating from differen...
Integration of multisensor data provides the opportunity to explore benefits emanating from differen...
Remote sensing is a well-suited source of information on various forest characteristics such as fore...
Defoliation is a key parameter of forest health and is associated with reduced productivity and tree...
Heterogeneous Amazonian landscapes and complex forest stand structure often make aboveground biomass...
Abundant vegetation species and associated complex forest stand structures in moist tropical regions...
Vegetation is an important part of ecosystem and estimation of fractional vegetation cover is of sig...
The Sierra Madre Occidental mountain range (Durango, Mexico) is of great ecological interest because...
The data saturation problem in Landsat imagery is well recognized and is regarded as an important fa...
While most forest maps identify only the dominant vegetation class in delineated stands, individual ...
In the region covered by variable amounts of vegetation, pixel spectra received by remotely-sensed s...
Fennica 41(3): 441–456. One of the most common applications of remote sensing in forestry is the pro...
Fractional vegetation cover (FVC), or green vegetation fraction, is an important parameter for chara...
Forest biochemical and biophysical variables and their spatial and temporal distribution are essenti...
A main limitation of pixel-based vegetation indices or reflectance values for estimating above-groun...
Integration of multisensor data provides the opportunity to explore benefits emanating from differen...
Integration of multisensor data provides the opportunity to explore benefits emanating from differen...
Remote sensing is a well-suited source of information on various forest characteristics such as fore...
Defoliation is a key parameter of forest health and is associated with reduced productivity and tree...
Heterogeneous Amazonian landscapes and complex forest stand structure often make aboveground biomass...
Abundant vegetation species and associated complex forest stand structures in moist tropical regions...
Vegetation is an important part of ecosystem and estimation of fractional vegetation cover is of sig...
The Sierra Madre Occidental mountain range (Durango, Mexico) is of great ecological interest because...
The data saturation problem in Landsat imagery is well recognized and is regarded as an important fa...
While most forest maps identify only the dominant vegetation class in delineated stands, individual ...
In the region covered by variable amounts of vegetation, pixel spectra received by remotely-sensed s...
Fennica 41(3): 441–456. One of the most common applications of remote sensing in forestry is the pro...
Fractional vegetation cover (FVC), or green vegetation fraction, is an important parameter for chara...
Forest biochemical and biophysical variables and their spatial and temporal distribution are essenti...