COLOR SEGMENTATION OF MGG COLORED CYTOLOGICAL IMAGES USING NON LINEAR OPPONENT COLOR SPACES

Authors

  • Hélène Gouinaud École Nationale Supérieure des Mines de Saint-Étienne
  • Lara Leclerc LINA EA-4624, F-42023, Saint-Etienne

DOI:

https://doi.org/10.5566/ias.v32.p167-174

Keywords:

color, cytology, human vision, image analysis, logarithmic image processing, segmentation

Abstract

This paper presents a color image segmentation method for the quantification of viable cells from samples obtained after cytocentrifugation process and May Grunwald Giemsa (MGG) coloration and then observed by optical microscopy. The method is based on color multi-thresholding and mathematical morphology processing using color information on human visual system based models such as CIELAB model, LUX (Logarithmic hUe eXtension) model and CoLIP (Color Logarithmic Image Processing) model, a new human color vision based model also presented in this article. The results show that the CoLIP model, developed following each step of the human visual color perception, is particularly well adapted for this type of images.

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Published

2013-10-28

Issue

Section

Original Research Paper

How to Cite

Gouinaud, H., & Leclerc, L. (2013). COLOR SEGMENTATION OF MGG COLORED CYTOLOGICAL IMAGES USING NON LINEAR OPPONENT COLOR SPACES. Image Analysis and Stereology, 32(3), 167-174. https://doi.org/10.5566/ias.v32.p167-174