Urban surfaces are highly inhomogeneous because of the high spatial and spectral diversity of man-made structures. Spectral unmixing techniques although developed to be used with hyperspectral data, are useful for assessing sub-pixel information on multispectral data as well. The large spectral variability imposes the use of multiple endmember spectral mixture analysis techniques, in which many possible mixture models are considered to produce the best fit. The use of many endmembers and mixture models result in prohibitive computational time. In this study, an artificial neural network is used to inverse the pixel spectral mixture in Landsat imagery. Endmember spectra, collected from the image were used to train the network and capture the...
Sub-pixel classification is essential for the successful description of many land cover (LC) feature...
Neural networks (NNs) are recognized as very effective techniques when facing complex retrieval task...
Mixture modelling is becoming an increasingly important tool in the remote sensing community as rese...
Urban surfaces are highly inhomogeneous because of the high spatial and spectral diversity of man-ma...
Mapping urban surfaces using Earth Observation data is one the most challenging tasks of remote sens...
The high spatial diversity of man-made structures, the spectral variability of urban materials, and ...
Spectral unmixing provides information on a sub-pixel level, which is extremely useful for studying ...
Abstract—In this letter, we address the use of artificial neural networks for spectral mixture analy...
Using a linear unconstrained least squares (LSS) method and a non-linear artificial neural network (...
Abstract — Many available techniques for spectral mixture analysis involve the separation of mixed p...
Spectral unmixing is a key process in identifying spectral signature of materials and quantifying th...
In this work, we address the use of neural networks for nonlinear mixture modeling of hyperspectral ...
Abstract—As the initial stage of a supervised classification, the quality of training has a signific...
Sub-pixel classification is essential for the successful description of many land cover (LC) feature...
Sub-pixel classification is essential for the successful description of many land cover (LC) feature...
Neural networks (NNs) are recognized as very effective techniques when facing complex retrieval task...
Mixture modelling is becoming an increasingly important tool in the remote sensing community as rese...
Urban surfaces are highly inhomogeneous because of the high spatial and spectral diversity of man-ma...
Mapping urban surfaces using Earth Observation data is one the most challenging tasks of remote sens...
The high spatial diversity of man-made structures, the spectral variability of urban materials, and ...
Spectral unmixing provides information on a sub-pixel level, which is extremely useful for studying ...
Abstract—In this letter, we address the use of artificial neural networks for spectral mixture analy...
Using a linear unconstrained least squares (LSS) method and a non-linear artificial neural network (...
Abstract — Many available techniques for spectral mixture analysis involve the separation of mixed p...
Spectral unmixing is a key process in identifying spectral signature of materials and quantifying th...
In this work, we address the use of neural networks for nonlinear mixture modeling of hyperspectral ...
Abstract—As the initial stage of a supervised classification, the quality of training has a signific...
Sub-pixel classification is essential for the successful description of many land cover (LC) feature...
Sub-pixel classification is essential for the successful description of many land cover (LC) feature...
Neural networks (NNs) are recognized as very effective techniques when facing complex retrieval task...
Mixture modelling is becoming an increasingly important tool in the remote sensing community as rese...