Title :
Spectral unmixing
Author :
Keshava, Nirmal ; Mustard, John F.
Author_Institution :
Lincoln Lab., MIT, Lexington, MA, USA
fDate :
1/1/2002 12:00:00 AM
Abstract :
Spectral unmixing using hyperspectral data represents a significant step in the evolution of remote decompositional analysis that began with multispectral sensing. It is a consequence of collecting data in greater and greater quantities and the desire to extract more detailed information about the material composition of surfaces. Linear mixing is the key assumption that has permitted well-known algorithms to be adapted to the unmixing problem. In fact, the resemblance of the linear mixing model to system models in other areas has permitted a significant legacy of algorithms from a wide range of applications to be adapted to unmixing. However, it is still unclear whether the assumption of linearity is sufficient to model the mixing process in every application of interest. It is clear, however, that the applicability of models and techniques is highly dependent on the variety of circumstances and factors that give rise to mixed pixels. The outputs of spectral unmixing, endmember, and abundance estimates are important for identifying the material composition of mixtures
Keywords :
principal component analysis; remote sensing; spectral analysis; PCA; abundance estimates; dimension reduction; endmember determination; hyperspectral data; linear mixing model; material composition; multispectral sensing; nonlinear mixing; nonstatistical methods; principal component analysis; remote decompositional analysis; remote sensing; spectral unmixing; Analytical models; Atmospheric modeling; Data mining; Hyperspectral imaging; Hyperspectral sensors; Layout; Reflectivity; Remote sensing; Spatial resolution; Spectroscopy;
Journal_Title :
Signal Processing Magazine, IEEE