Bayesian shape modelling of cross-sectional geological data
Tsiftsi, Thomai, Jermyn, Ian H., Einbeck, Jochen
In particular, their cross-sectional shapes help determine their oil-bearing capacity. Current classification schemes for sand body shapes are qualitative, simple, and ad hoc, and so there is a need for a quantitative analysis with the help of statistical models. There are several problems of interest: estimation of shape class parameters given labelled data shapes (a'data shape' is an ordered set of points in R 2); classification of new data shapes; and unsupervised classification. Parameter estimation is described by the probability P(w y,c), where w denotes the shape class parameters andy the dataset, which consists of several data shapes, together with their class labelsc. By Bayes' theorem, this is given by: P(w y,c) P(y w,c) P(w).
Feb-26-2018