Data Augmentation for Histopathological Images Based on
Gaussian-Laplacian Pyramid Blending
- URL: http://arxiv.org/abs/2002.00072v2
- Date: Sat, 16 May 2020 16:25:22 GMT
- Title: Data Augmentation for Histopathological Images Based on
Gaussian-Laplacian Pyramid Blending
- Authors: Steve Tsham Mpinda Ataky and Jonathan de Matos and Alceu de S. Britto
Jr. and Luiz E. S. Oliveira and Alessandro L. Koerich
- Abstract summary: Data imbalance is a major problem that affects several machine learning (ML) algorithms.
In this paper, we propose a novel approach capable of not only augmenting HI dataset but also distributing the inter-patient variability.
Experimental results on the BreakHis dataset have shown promising gains vis-a-vis the majority of DA techniques presented in the literature.
- Score: 59.91656519028334
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Data imbalance is a major problem that affects several machine learning (ML)
algorithms. Such a problem is troublesome because most of the ML algorithms
attempt to optimize a loss function that does not take into account the data
imbalance. Accordingly, the ML algorithm simply generates a trivial model that
is biased toward predicting the most frequent class in the training data. In
the case of histopathologic images (HIs), both low-level and high-level data
augmentation (DA) techniques still present performance issues when applied in
the presence of inter-patient variability; whence the model tends to learn
color representations, which is related to the staining process. In this paper,
we propose a novel approach capable of not only augmenting HI dataset but also
distributing the inter-patient variability by means of image blending using the
Gaussian-Laplacian pyramid. The proposed approach consists of finding the
Gaussian pyramids of two images of different patients and finding the Laplacian
pyramids thereof. Afterwards, the left-half side and the right-half side of
different HIs are joined in each level of the Laplacian pyramid, and from the
joint pyramids, the original image is reconstructed. This composition combines
the stain variation of two patients, avoiding that color differences mislead
the learning process. Experimental results on the BreakHis dataset have shown
promising gains vis-a-vis the majority of DA techniques presented in the
literature.
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