Title :
Sonar image segmentation using an unsupervised hierarchical MRF model
Author :
Mignotte, Max ; Collet, Christophe ; Pérez, Patrick ; Bouthemy, Patrick
Author_Institution :
Groupe de Traitement du Signal, Ecole Navale, Lanveoc-Poulmic, France
fDate :
7/1/2000 12:00:00 AM
Abstract :
This paper is concerned with hierarchical Markov random field (MRP) models and their application to sonar image segmentation. We present an original hierarchical segmentation procedure devoted to images given by a high-resolution sonar. The sonar image is segmented into two kinds of regions: shadow (corresponding to a lack of acoustic reverberation behind each object lying on the sea-bed) and sea-bottom reverberation. The proposed unsupervised scheme takes into account the variety of the laws in the distribution mixture of a sonar image, and it estimates both the parameters of noise distributions and the parameters of the Markovian prior. For the estimation step, we use an iterative technique which combines a maximum likelihood approach (for noise model parameters) with a least-squares method (for MRF-based prior). In order to model more precisely the local and global characteristics of image content at different scales, we introduce a hierarchical model involving a pyramidal label field. It combines coarse-to-fine causal interactions with a spatial neighborhood structure. This new method of segmentation, called the scale causal multigrid (SCM) algorithm, has been successfully applied to real sonar images and seems to be well suited to the segmentation of very noisy images. The experiments reported in this paper demonstrate that the discussed method performs better than other hierarchical schemes for sonar image segmentation
Keywords :
Markov processes; image resolution; image segmentation; least squares approximations; maximum likelihood estimation; noise; random processes; reverberation; sonar imaging; unsupervised learning; Markovian prior; coarse-to-fine causal interactions; distribution mixture; experiments; global characteristics; hierarchical Markov random field; hierarchical model; hierarchical segmentation; high-resolution sonar; iterative technique; least-squares method; local characteristics; maximum likelihood estimation; noise distributions; noise model parameters; noisy images; parameter estimation; pyramidal label field; scale causal multigrid algorithm; sea-bed; sea-bottom reverberation; shadow; sonar image segmentation; spatial neighborhood structure; unsupervised hierarchical MRF model; Acoustic noise; Acoustic waves; Image segmentation; Iterative methods; Markov random fields; Maximum likelihood detection; Maximum likelihood estimation; Parameter estimation; Reverberation; Sonar applications;
Journal_Title :
Image Processing, IEEE Transactions on