Kc. Yao et al., Unsupervised segmentation using a self-organizing map and a noise model estimation in sonar imagery, PATT RECOG, 33(9), 2000, pp. 1575-1584
This work deals with unsupervised sonar image segmentation. We present a ne
w estimation and segmentation procedure on images provided by a high-resolu
tion 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 seabed) and reverberation (due to the reflection of acoustic wave o
n the seabed and on the objects). The unsupervised contextual method we pro
pose is defined as a two-step process. Firstly, the iterative conditional e
stimation is used for the estimation step in order to estimate the noise mo
del parameters and to accurately obtain the proportion of each class in the
maximum likelihood sense. Then, the learning of a Kohonen self-organizing
map (SOM) is performed directly on the input image to approximate the discr
iminating functions, i.e. the contextual distribution function of the grey
levels. Secondly, the previously estimated proportion, the contextual infor
mation and the Kohonen SOM, after learning, are then used in the segmentati
on step in order to classify each pixel on the input image. This technique
has been successfully applied to real sonar images, and is compatible with
an automatic processing of massive amounts of data. (C) 2000 Pattern Recogn
ition Society. Published by Elsevier Science Ltd. All rights reserved.