Several full-spectrum imaging techniques have been introduced in recent
years that promise to provide rapid and comprehensive chemical
characterization of complex samples. One of the remaining obstacles to
adopting these techniques for routine use is the difficulty of reducing
the vast quantities of raw spectral data to meaningful chemical
information. Multivariate factor analysis techniques, such as Principal
Component Analysis and Alternating Least Squares-based Multivariate Curve
Resolution, have proven effective for extracting the essential chemical
information from high dimensional spectral image data sets into a limited
number of components that describe the spectral characteristics and
spatial distributions of the chemical species comprising the sample.
There are many cases, however, in which those constraints are not
effective and where alternative approaches may provide new analytical
insights.For many cases of practical importance, imaged samples are
"simple" in the sense that they consist of relatively discrete chemical
phases. That is, at any given location, only one or a few of the chemical
species comprising the entire sample have non-zero concentrations. The
methods of spectral image analysis of the present invention exploit this
simplicity in the spatial domain to make the resulting factor models more
realistic. Therefore, more physically accurate and interpretable spectral
and abundance components can be extracted from spectral images that have
spatially simple structure.