In this paper, an approach to the segmentation of microscopic color images is addressed, and applied to medical images. The approach combines a clustering method and a region growing method. Each color plane is segmented independently relying on a watershed based clustering of the plane histogram. The marginal segmentation maps intersect in a label concordance map. The latter map is simplified based on the assumption that the color planes are correlated. This produces a simplified label concordance map containing labeled and unlabeled pixels. The formers are used as an image of seeds for a color watershed. This fast and robust segmentation scheme is applied to several types of medical images.
CITATION STYLE
Lezoray, O. (2003). Supervised automatic histogram clustering and watershed segmentation. Application to microscopic medical color images. Image Analysis and Stereology, 22(2), 113–120. https://doi.org/10.5566/ias.v22.p113-120
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