Abstract

In this paper, we propose a new nonlinear exponential adaptive two-dimensional (2-D) filter for texturecharacterization. The filter adaptive coefficients are updated with the Least Mean Square (LMS) algorithm. Theproposed nonlinear model is used for texture characterization with a 2-D Auto-Regressive (AR) adaptive model. Themain advantage of the new nonlinear exponential adaptive 2-D filter is the reduced number of coefficients used tocharacterize the nonlinear image regarding the 2-D second-order Volterra model. Whatever the degree of the nonlinearity,the problem results in the same number of coefficients as in the linear case. The characterization efficiency ofthe proposed exponential model is compared to the one provided by both 2-D linear and Volterra filters and the cooccurrencematrix method. The comparison is based on two criteria usually used to evaluate the features discriminatingability and the class quantification in characterization techniques. The first criterion is proposed to quantify theclassification accuracy based on a weighted Euclidean distance classifier. The second criterion is the characterizationdegree based on the ratio of ";;;;;;;between-class";;;;;;; variances with respect to ";;;;;;;within-class";;;;;;; variances of the estimatedcoefficients. Extensive experiments proved that the exponential model coefficients give better results in texturediscrimination than several other parametric characterization methods even in a noisy context.Key words: Image Analysis, 2-D nonlinear filter, 2-D adaptive filter, texture characterization.

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