Wavelet-based multiscale texture segmentation: Application to stromal compartment characterization on virtual slides

We aim at segmenting very large images of histopathology virtual slides with an heterogeneous and complex content. To this end, we propose a multiscale framework for texture-based color image segmentation. The core of the method is based on a wavelet-domain hidden Markov tree model and a pairwise cl...

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Veröffentlicht in:Signal processing 2010-08, Vol.90 (8), p.2412-2422
Hauptverfasser: Signolle, Nicolas, Revenu, Marinette, Plancoulaine, Benoît, Herlin, Paulette
Format: Artikel
Sprache:eng
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Zusammenfassung:We aim at segmenting very large images of histopathology virtual slides with an heterogeneous and complex content. To this end, we propose a multiscale framework for texture-based color image segmentation. The core of the method is based on a wavelet-domain hidden Markov tree model and a pairwise classifiers design and selection. The classifier selection is founded on a study of the influence of the hyperparameters of the method used. Over the testing set, majority vote was found to be the best way of combining outputs of the selected classifiers. The method is applied to the segmentation of various types of ovarian carcinoma stroma, on very large virtual slides. This is the first time such a segmentation is tested. The segmentation results are presented and discussed.
ISSN:0165-1684
1872-7557
DOI:10.1016/j.sigpro.2009.11.008