Using principal component analysis to enhance the generalized multifractal analysis approach to textural segmentation: Theory and application to microresistivity well logs
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We introduce a new method to perform textural segmentation by mean of generalized multifractal analysis. This method can be applied to any signal or measure, self-similar or not. The main idea is to expand the log-generating function Φq(x) on a collection of basis functions denoted by Ψq,n(x). These functions are chosen to be the principal components of the collection of functions Φq(x) which is obtained from a sliding window analysis of a 1D-signal. This approach allows to represent texture with a minimal number of uncorrelated textural parameters. Significant improvements are obtained for the textural segmentation of dipmeter microresistivity well logs.
[1] Jacques Lévy Véhel,et al. Fractals: Theory and Applications in Engineering , 1999 .
[2] A Generalization of Multifractal Analysis Based on Polynomial Expansions of the Generating Function , 1999 .
[3] J. Zemanek,et al. The Borehole TeleviewerA New Logging Concept for Fracture Location and Other Types of Borehole Inspection , 1969 .
[4] Antoine Saucier,et al. Electrical texture characterization of dipmeter microresistivity signals using multifractal analysis , 1997 .