Dissertação
Classificação de fases em imagens hiperespectrais de raios X característicos pelo método de agrupamento por deslocamento para a média
Fecha
2012-01-23Registro en:
MARTINS, Diego Schmaedech. Phase classification in characteristic X-rays
hyperspectral images by mean shift clustering method. 2012. 67 f. Dissertação (Mestrado em Ciência da Computação) - Universidade Federal de Santa Maria, Santa Maria, 2012.
Autor
Martins, Diego Schmaedech
Institución
Resumen
In the present work we introduce the Mean Shift Clustering (MSC) algorithm as a
valuable alternative to perform materials phase classification from hyperspectral images.
As opposed to other multivariate statistical techniques, such as principal components analysis
(PCA), clustering techniques directly assign a class (phase) label to each pixel, so
that their outputs are phase segmented images, i.e. , there is no need for an additional segmentation
algorithm. On the other hand, as compared to other clustering procedures and
classification methods based on cluster analysis, MSC has the advantages of not requiring
previous knowledge of the number of data clusters and not assuming any shape of these
clusters, i.e., neither the number nor the composition of the phases must be previously
known. This makes MSC a particularly useful tool for exploratory research, allowing automatic
phase identification of unknown samples. Other advantages of this approach are
the possibility of multimodal image analysis, composed of different types of signals, and
estimate the uncertainties of the analysis. Finally, the visualization and interpretation of
results are also simplified, since the information content of the output image does not depend
on any arbitrary choice of the contents of the color channels. In this paper we apply
the PCA and MSC algorithms for the analysis of characteristic X-ray maps acquired in
Scanning Electron Microscopes (SEM) which is equipped with Energy Dispersive Detection
Systems (EDS). Our results indicate that MSC is capable of detecting minor phases,
not clearly identified when only three components obtained by PCA are used.