DocumentCode
3861610
Title
Object classification in 3-D images using alpha-trimmed mean radial basis function network
Author
A.G. Bors;I. Pitas
Author_Institution
Dept. of Inf., Thessaloniki Univ., Greece
Volume
8
Issue
12
fYear
1999
Firstpage
1744
Lastpage
1756
Abstract
We propose a pattern classification based approach for simultaneous three-dimensional (3-D) object modeling and segmentation in image volumes. The 3-D objects are described as a set of overlapping ellipsoids. The segmentation relies on the geometrical model and graylevel statistics. The characteristic parameters of the ellipsoids and of the graylevel statistics are embedded in a radial basis function (RBF) network and they are found by means of unsupervised training. A new robust training algorithm for RBF networks based on /spl alpha/-trimmed mean statistics is employed in this study. The extension of the Hough transform algorithm in the 3-D space by employing a spherical coordinate system is used for ellipsoidal center estimation. We study the performance of the proposed algorithm and we present results when segmenting a stack of microscopy images.
Keywords
"Intelligent networks","Radial basis function networks","Image segmentation","Ellipsoids","Clustering algorithms","Statistics","Pattern classification","Solid modeling","Layout","Brain"
Journal_Title
IEEE Transactions on Image Processing
Publisher
ieee
ISSN
1057-7149
Type
jour
DOI
10.1109/83.806620
Filename
806620
Link To Document