Title :
Using self-organizing maps approach to pipeline localization
Author :
Puttipipatkajorn, A. ; Jouvencel, B. ; Salgado-Jimenez, T.
Author_Institution :
LIRMM, Montpellier II Univ., France
Abstract :
The aim of this paper is to detect and follow the pipeline in sonar imagery. This work is performed in two steps. The first is to split an image (first experiment) or a transformed line image of pipeline image (second experiment) into regions of uniform texture using the Gray Level Concurrence Matrix Method (GLCM). The second addresses the unsupervised learning method based on the Artificial Neural Networks (Self-Organizing Map or SOM) used for determining the comparative model of pipeline from the image. To increase the performance of SOM, we propose a penalty function based on data histogram visualization for detecting the position of pipeline. After a brief review of both techniques (GLCM and SOM), we present our methods and some results from several experiments on the real world data set.
Keywords :
data visualisation; learning (artificial intelligence); oceanographic techniques; pipelines; self-organising feature maps; sonar detection; sonar imaging; underwater sound; Artificial Neural Networks; GLCM; Gray Level Concurrence Matrix Method; SOM; comparative model; data histogram visualization; image splitting; penalty function; pipeline detection; pipeline localization; pipeline position; self-organizing maps; side scan sonar; sonar imagery; transformed line image; unsupervised learning method; Acoustic reflection; Clustering algorithms; Data mining; Data visualization; Pipelines; Pixel; Reverberation; Self organizing feature maps; Sonar detection; Testing;
Conference_Titel :
OCEANS 2003. Proceedings
Conference_Location :
San Diego, CA, USA
Print_ISBN :
0-933957-30-0
DOI :
10.1109/OCEANS.2003.1282919