Wavelet Modeling Using Finite Mixtures of Generalized Gaussian Distributions Application to Texture Discrimination and Retrieval - 2012 PROJECT TITLE :Wavelet Modeling Using Finite Mixtures of Generalized Gaussian Distributions Application to Texture Discrimination and Retrieval - 2012ABSTRACT: This paper addresses statistical-based texture modeling using wavelets. We propose a new approach to represent the marginal distribution of the wavelet coefficients using finite mixtures of generalized Gaussian (MoGG) distributions. The MoGG captures a wide range of histogram shapes, which provides better description and discrimination of texture than using single probability density functions (pdf's), as proposed by recent state-of-the-art approaches. Moreover, we propose a model similarity measure based on Kullback-Leibler divergence (KLD) approximation using Monte Carlo sampling methods. Through experiments on two popular texture data sets, we show that our approach yields significant performance improvements for texture discrimination and retrieval, as compared with recent methods of statistical-based wavelet modeling. Did you like this research project? To get this research project Guidelines, Training and Code... Click Here facebook twitter google+ linkedin stumble pinterest View-invariant action recognition based on Artificial Neural Networks - 2012 Polyview Fusion A Strategy to Enhance Video-Denoising Algorithms - 2012