Segmentation of Medical Images Using LEGION (1999)
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| Venue: | IEEE Trans. Med. Imag |
| Citations: | 16 - 6 self |
BibTeX
@ARTICLE{Shareef99segmentationof,
author = {Naeem Shareef and DeLiang L. Wang and Roni Yagel},
title = {Segmentation of Medical Images Using LEGION},
journal = {IEEE Trans. Med. Imag},
year = {1999},
volume = {18},
pages = {74--91}
}
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Abstract
Advances in visualization technology and specialized graphic workstations allow clinicians to virtually interact with anatomical structures contained within sampled medical-image datasets. A hindrance to the effective use of this technology is the difficult problem of image segmentation. In this paper, we utilize a recently proposed oscillator network called the locally excitatory globally inhibitory oscillator network (LEGION) whose ability to achieve fast synchrony with local excitation and desynchrony with global inhibition makes it an effective computational framework for grouping similar features and segregating dissimilar ones in an image. We extract an algorithm from LEGION dynamics and propose an adaptive scheme for grouping. We show results of the algorithm to two-dimensional (2-D) and threedimensional (3-D) (volume) computerized topography (CT) and magnetic resonance imaging (MRI) medical-image datasets. In addition, we compare our algorithm with other algorithms for medical-...







