DocumentCode
1134498
Title
Superellipse Fitting for the Recovery and Classification of Mine-Like Shapes in Sidescan Sonar Images
Author
Dura, Esther ; Bell, Judith ; Lane, Dave
Author_Institution
Inst. of Robot., Univ. de Valencia, Valencia
Volume
33
Issue
4
fYear
2008
Firstpage
434
Lastpage
444
Abstract
Mine-like object classification from sidescan sonar images is of great interest for mine counter measure (MCM) operations. Because the shadow cast by an object is often the most distinct feature of a sidescan image, a standard procedure is to perform classification based on features extracted from the shadow. The classification can then be performed by extracting features from the shadow and comparing this to training data to determine the object. In this paper, a superellipse fitting approach to classifying mine-like objects in sidescan sonar images is presented. Superellipses provide a compact and efficient way of representing different mine-like shapes. Through variation of a simple parameter of the superellipse function different shapes such as ellipses, rhomboids, and rectangles can be easily generated. This paper proposes a classification of the shape based directly on a parameter of the superellipse known as the squareness parameter. The first step in this procedure extracts the contour of the shadow given by an unsupervised Markovian segmentation algorithm. Afterwards, a superellipse is fitted by minimizing the Euclidean distance between points on the shadow contour and the superellipse. As the term being minimized is nonlinear, a closed-form solution is not available. Hence, the parameters of the superellipse are estimated by the Nelder-Mead simplex technique. The method was then applied to sidescan data to assess its ability to recover and classify objects. This resulted in a recovery rate of 70% (34 of the 48 mine-like objects) and a classification rate of better than 80% (39 of the 48 mine-like objects).
Keywords
Markov processes; buried object detection; curve fitting; feature extraction; image classification; image segmentation; sonar detection; sonar imaging; surface topography; contour extraction; mine counter measure; mine-like object classification; mine-like shapes; shape recovery; sidescan sonar images; superellipse fitting; unsupervised Markovian segmentation algorithm; Counting circuits; Data mining; Decision making; Euclidean distance; Feature extraction; Intelligent robots; Shape measurement; Sonar measurements; Training data; Vehicles; Classification; mine-like objects; recovery; sidescan; sonar; superellipse fitting;
fLanguage
English
Journal_Title
Oceanic Engineering, IEEE Journal of
Publisher
ieee
ISSN
0364-9059
Type
jour
DOI
10.1109/JOE.2008.2002962
Filename
4769678
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