Figure 6: Spectra estimated by JADE.
Figure 7: Spectra estimated by NMF.
Figure 8: Spectra estimated by MLPSS.
4 CONCLUSIONS
Four BSS methods were studied on simulated and real
datasets. Taking into account only the positivity, the
NMF fails to estimate the interesting spectra. The
positivity combined with the independence allows the
MLPSS method to provide a good estimator for the
biopsy, but artefacts are obtained for the paraffin for
which the same peak is extracted by more than one
estimator. Furthermore, the results obtained by this
method depend on the analyzed biopsy. ICA-based
methods give good estimators for all spectra, which
do not depend on the biopsies, and extract positive
mixing coefficients. These last methods can thus be
employed as an efficient tool for the extraction of Ra-
man spectra of chemical species and consequently for
a numerical dewaxing of biopsies. However, all these
methods allow to extract a unique spectrum of the
skin, which might be insufficient for a classification
purpose. Investigations are under way for the study of
a numerical dewaxing based on least square methods,
taking into account the Raman spectra of the parafin
estimated on paraffin blocks.
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