A markov random field model-based approach to unsupervised texture segmentation using local and global spatial statistics - Archive ouverte HAL Access content directly
Reports (Research Report) Year : 1993

A markov random field model-based approach to unsupervised texture segmentation using local and global spatial statistics

Abstract

The general problem of unsupervised textured image segmentation remains a fundamental but not entirely solved issue in image analysis. Many studies have proven that statistical model-based texture segmentation algorithms yield good results provided that the model parameters and the number of regions be known a priori. In this paper, we present an unsupervised texture segmentation method which does not require a priori knowledge about the different texture regions, their parameters or the number of available texture classes. The proposed algorithm relies on the analysis of local and global second and higher order spatial statistics of the original images. The segmentation map is modeled using an augmented-state Markov random field, including an outlier class which enables dynamic creation of new regions during the optimization process. A bayesian estimates of this map is computed using a deterministic relaxation algorithm. The whole segmentation procedure is controlled by one single parameter. Results on mosaics of natural textures and real-world textured images show the ability of the model to yield relevant and robust segmentations when the number of regions and the different texture classes are not known a priori.

Domains

Other [cs.OH]
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Dates and versions

inria-00074610 , version 1 (24-05-2006)

Identifiers

  • HAL Id : inria-00074610 , version 1

Cite

Charles Kervrann, Fabrice Heitz. A markov random field model-based approach to unsupervised texture segmentation using local and global spatial statistics. [Research Report] RR-2062, INRIA. 1993. ⟨inria-00074610⟩
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