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Structure Preserving Stain Normalization of Histopathology Images Using Self Supervised Semantic Guidance
Authors
A BenTaieb
A Janowczyk
+17 more
A Khan
A Lahiani
BE Bejnordi
D Mahapatra
D Mahapatra
D Mahapatra
E Reinhard
K Sirinukunwattana
L Gupta
M Gadermayr
M Zhao
N Zhou
O Ronneberger
T Ross
T-Y Lin
W Bai
Y Wu
Publication date
1 January 2020
Publisher
ZU Scholars
Doi
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on
arXiv
Abstract
© 2020, Springer Nature Switzerland AG. Although generative adversarial network (GAN) based style transfer is state of the art in histopathology color-stain normalization, they do not explicitly integrate structural information of tissues. We propose a self-supervised approach to incorporate semantic guidance into a GAN based stain normalization framework and preserve detailed structural information. Our method does not require manual segmentation maps which is a significant advantage over existing methods. We integrate semantic information at different layers between a pre-trained semantic network and the stain color normalization network. The proposed scheme outperforms other color normalization methods leading to better classification and segmentation performance
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ZU Scholars (Zayed University)
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oai:zuscholars.zu.ac.ae:works-...
Last time updated on 03/12/2021
Infoscience - École polytechnique fédérale de Lausanne
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oai:infoscience.epfl.ch:278990
Last time updated on 04/11/2020
Crossref
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Last time updated on 11/08/2021