Texture-Based Multiscale Segmentation: Application to Stromal Compartment Characterization on Ovarian Carcinoma Virtual Slides

نویسندگان

  • Nicolas Signolle
  • Benoît Plancoulaine
  • Paulette Herlin
  • Marinette Revenu
چکیده

A multiscale segmentation strategy using wavelet-domain hidden Markov tree model and pairwise classifiers selection is tested in the present paper for histopathology virtual slide analysis. The classifiers selection is based on a study of the influence of hyper-parameters of the method. Combination of outputs of selected classifiers is then done with majority vote. The results of the segmentation of various types of stroma of ovarian carcinomas are presented and discussed.

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تاریخ انتشار 2008