Bayesian Multifractal Image Segmentation
Kareth M. Le\'on-L\'opez, Abderrahim Halimi, Jean-Yves Tourneret, Herwig Wendt

TL;DR
This paper presents an unsupervised Bayesian method for segmenting multifractal textures in images by jointly estimating local multifractal parameters and pixel labels, leveraging wavelet analysis and Markov random fields.
Contribution
It introduces a novel Bayesian framework with efficient parameter estimation and spatial modeling for pixel-level multifractal image segmentation.
Findings
Outperforms traditional segmentation methods.
Achieves superior results compared to deep learning approaches.
Effective in segmenting complex multifractal textures.
Abstract
Multifractal analysis (MFA) provides a framework for the global characterization of image textures by describing the spatial fluctuations of their local regularity based on the multifractal spectrum. Several works have shown the interest of using MFA for the description of homogeneous textures in images. Nevertheless, natural images can be composed of several textures and, in turn, multifractal properties associated with those textures. This paper introduces an unsupervised Bayesian multifractal segmentation method to model and segment multifractal textures by jointly estimating the multifractal parameters and labels on images, at the pixel-level. For this, a computationally and statistically efficient multifractal parameter estimation model for wavelet leaders is firstly developed, defining different multifractality parameters for different regions of an image. Then, a multiscale Potts…
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Taxonomy
TopicsImage Retrieval and Classification Techniques · Medical Image Segmentation Techniques · Digital Imaging for Blood Diseases
