1 April 2000 Automated segmentation of the corpus callosum in midsagittal brain magnetic resonance images
Chulhee Lee, Shin Huh, Terence A. Ketter, Michael A. Unser
Author Affiliations +
We propose a new algorithm to find the corpus callosum automatically from midsagittal brain MR (magnetic resonance) images using the statistical characteristics and shape information of the corpus callosum. We first extract regions satisfying the statistical characteristics (gray level distributions) of the corpus callosum that have relatively high intensity values. Then we try to find a region matching the shape information of the corpus callosum. In order to match the shape information, we propose a new directed window region growing algorithm instead of using conventional contour matching. An innovative feature of the algorithm is that we adaptively relax the statistical requirement until we find a region matching the shape information. After the initial segmentation, a directed border path pruning algorithm is proposed in order to remove some undesired artifacts, especially on the top of the corpus callosum. The proposed algorithm was applied to over 120 images and provided promising results.
Chulhee Lee, Shin Huh, Terence A. Ketter, and Michael A. Unser "Automated segmentation of the corpus callosum in midsagittal brain magnetic resonance images," Optical Engineering 39(4), (1 April 2000). https://doi.org/10.1117/1.602449
Published: 1 April 2000
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Cited by 16 scholarly publications.
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KEYWORDS
Image segmentation

Brain

Neuroimaging

Magnetic resonance imaging

Tissues

Optical engineering

Detection and tracking algorithms

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