Color-Texture
Segmentation of Medical Images
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A novel color
texture-based segmentation algorithm is
proposed. Many powerful color
segmentation algorithms such as JSEG (J-SEGmentation)
suffer from over segmentation. An
improved JSEG method called improved
contrast JSEG (IC-JSEG) is developed to
construct the contrast map to obtain the
basic contours of the homogeneous
regions in the image. A two serial
type-based filtering and a
noise-protected edge detector are
adopted to remove the noise and enhance
the edge strength to provide a better
contrast map. Based on the combination
of improved contrast map and the
original J map in JSEG, seed
growing-merging method is used to
segment the image. Experiments on both
natural color-texture images and color
medical images show promising results. |
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Project Sponsors:
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Collaborators:
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Graduate Students: |
Yuchou Chang
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Publications:
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Y. Chang,
D.J. Lee, and Y. Wang, “Color-Texture Segmentation of
Medical Images Based on Local Contrast Information”, IEEE
Symposium on Computational Intelligence in Bioinformatics and
Computational Biology (CIBCB 2007), Honolulu, Hawaii,
USA, April 1-5, 2007.
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(Click image to view
paper poster)
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