MULTICLASS SPECTRAL DECOMPOSITION OF REMOTELY-SENSED SCENES BY SELECTIVE PIXEL UNMIXING

Authors
Citation
F. Maselli, MULTICLASS SPECTRAL DECOMPOSITION OF REMOTELY-SENSED SCENES BY SELECTIVE PIXEL UNMIXING, IEEE transactions on geoscience and remote sensing, 36(5), 1998, pp. 1809-1820
Citations number
25
Categorie Soggetti
Engineering, Eletrical & Electronic","Geochemitry & Geophysics","Remote Sensing
ISSN journal
01962892
Volume
36
Issue
5
Year of publication
1998
Part
2
Pages
1809 - 1820
Database
ISI
SICI code
0196-2892(1998)36:5<1809:MSDORS>2.0.ZU;2-R
Abstract
Linear pixel unmixing is a straightforward and efficient approach to t he spectral decomposition of multichannel remotely sensed scenes. A ma in drawback to its utilization in operational cases, however, is that the number of spectral components that can be correctly treated must b e less or equal to the scene dimensionality (the so-called ''condition of identifiability''). To overcome the limitations deriving from this condition, a two-step strategy is currently proposed for application to each scene pixel. Provided that many spectral end-members are avail able, a subset with a prefixed number of end-members that optimally de compose the candidate pixel is first selected by a procedure based on the Gramm-Schmidt orthogonalization process. This restricted subset is then employed for conventional linear pixel unmixing. The final resul t is the decomposition of the multispectral scene into all the end-mem bers considered while reducing the residual errors deriving from inter class spectral variability. The new procedure has been tested in three case studies representative of different environmental situations and data sets. The results of these experiments, compared to those of a c onventional procedure, show that the new method identifies more clearl y the spectral signal associated to all scene components and significa ntly reduces (20-30%) the residual error of the decomposition process. This is confirmed by further tests using synthetic scenes that are li near combinations of known end-members. In these cases, the reduction of the residual error by the new method is much higher (up to 70-80%) and the abundance images produced are more accurate estimates of the r eal components.