AbstractAddressing the problem of spectral mixing in remotely sensed forest cover mapping, a linear spectral unmixing approach was employed in the study to assess if sub-pixel method would improve forest cover estimation accuracy in the context of complex subtropical forest ecosystem. After masking out water bodies using Modified Normalized Difference Water Index (MNDWI), the TM imagery of Pingnan County, Guangxi Zhuang Autonomous Region, China, was processed with Minimum Noise Fraction (MNF) Rotation transform and Pixel Purity Index (PPI), thus “pure” spectral endmembers of woody cover, herbaceous vegetation and bare ground were extracted as input into the spectral unmixing algorithm and produced forest map. The forest percentage is 55.7%,...
Forest covers about a third of terrestrial land surface, with tropical and subtropical zones being a...
Forest plays an important role in global carbon, hydrological and atmospheric cycles and provides a ...
Forest biochemical and biophysical variables and their spatial and temporal distribution are essenti...
AbstractAddressing the problem of spectral mixing in remotely sensed forest cover mapping, a linear ...
Remote sensing is a well-suited source of information on various forest characteristics such as fore...
Accurately mapping urban vegetation carbon density is challenging because of complex landscapes and ...
Spectral unmixing refers to the process by which the spectrum measured over a mixed target is decomp...
AbstractRemotely sensed forest mapping has become an important way to meet the increasing needs for ...
The data saturation problem in Landsat imagery is well recognized and is regarded as an important fa...
Optical remote sensing data have been considered to display signal saturation phenomena in regions o...
Quantifying the spatial pattern of large-scale forest biomass can provide a general picture of the c...
Remote sensing offers an economical tool to perform forest mapping and to meet forest manager needs....
Detection of subpixel endmember proportions in the realm of land cover and land cover change mapping...
In the region covered by variable amounts of vegetation, pixel spectra received by remotely-sensed s...
Moderate resolution remote sensing data, such as Landsat satellite image, has been widely used in ma...
Forest covers about a third of terrestrial land surface, with tropical and subtropical zones being a...
Forest plays an important role in global carbon, hydrological and atmospheric cycles and provides a ...
Forest biochemical and biophysical variables and their spatial and temporal distribution are essenti...
AbstractAddressing the problem of spectral mixing in remotely sensed forest cover mapping, a linear ...
Remote sensing is a well-suited source of information on various forest characteristics such as fore...
Accurately mapping urban vegetation carbon density is challenging because of complex landscapes and ...
Spectral unmixing refers to the process by which the spectrum measured over a mixed target is decomp...
AbstractRemotely sensed forest mapping has become an important way to meet the increasing needs for ...
The data saturation problem in Landsat imagery is well recognized and is regarded as an important fa...
Optical remote sensing data have been considered to display signal saturation phenomena in regions o...
Quantifying the spatial pattern of large-scale forest biomass can provide a general picture of the c...
Remote sensing offers an economical tool to perform forest mapping and to meet forest manager needs....
Detection of subpixel endmember proportions in the realm of land cover and land cover change mapping...
In the region covered by variable amounts of vegetation, pixel spectra received by remotely-sensed s...
Moderate resolution remote sensing data, such as Landsat satellite image, has been widely used in ma...
Forest covers about a third of terrestrial land surface, with tropical and subtropical zones being a...
Forest plays an important role in global carbon, hydrological and atmospheric cycles and provides a ...
Forest biochemical and biophysical variables and their spatial and temporal distribution are essenti...