Title Comparison of linear discriminant functions in image classification
Translation of Title Tiesinių diskriminantinių funkcijų taikymas vaizdų atpažinime.
Authors Stabingienė, Lijana ; Stabingis, Giedrius ; Dučinskas, Kęstutis
DOI 10.15388/LMR.2010.42
Full Text Download
Is Part of Lietuvos matematikos rinkinys : Lietuvos matematikų draugijos darbai.. Vilnius : Matematikos ir informatikos institutas. 2010, t. 51, p. 227-231.. ISSN 0132-2818. eISSN 2335-898X
Keywords [eng] training sample ; Markov Random Fields ; spatial correlation
Abstract [eng] In statistical image classification it is usually assumed that feature observations given labels are independently distributed. We have retracted this assumption by proposing stationary Gaussian random field (GRF) model for features observations. Conditional distribution of label of observation to be classified is assumed to be dependent on its spatial adjacency with training sample spatial framework. Perfomance of the Bayes discriminant function (BDF) and performance of plug-in BDF are tested and are compared with ones ignoring spatial correlation among feature observations. For illustration image of figure corrupted by additive GRF is analyzed. Advantage of proposed BDF against competing ones is shown visually and numerically.
Published Vilnius : Matematikos ir informatikos institutas
Type Journal article
Language English
Publication date 2010
CC license CC license description