IDC-Iproved direct calibration: a new direct calibration method applied to hyperspectral image analysis
Calibrating consists in predicting Y, a quantitative variable
of interest, using P explaining variables. PLSR-Projection
to Latent Structures Regression (Wold,[1]) is the most popular
method, very powerfull when a calibration dataset is
available. Other methods don't need a calibration dataset,
they are called direct calibrations. Two of them have been
proposed previously: DC-Direct Calibration (as described in
Martens and Naes, [2]) and SBC-Science Based Calibration
(Marbach([3])). New method called IDC-Improved Direct
Calibration is proposed. As for DC, this approach is based on
an orthogonal projection. IDC projector is obtained by merging
DC projector (consisting only in pure spectra of chemical
compounds), and vectors characterising physical influence
factors (consisting in PCA loadings onto a design dataset).
Indeed, hyperspectral image analysis is a case where calibration
data are not available. Thus, it's interesting to use direct
calibration methods instead of PLSR. With the prior knowledge
of a few reference spectra, and modelling some noise from the hyperspectral image itself, it's possible to identify objects of interest from the background. This method is also simple and understandable, very quick and easy to compute.
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