Performance of GAN-based augmentation for deep learning COVID-19 image
classification
- URL: http://arxiv.org/abs/2304.09067v2
- Date: Fri, 2 Feb 2024 20:49:54 GMT
- Title: Performance of GAN-based augmentation for deep learning COVID-19 image
classification
- Authors: Oleksandr Fedoruk, Konrad Klimaszewski, Aleksander Ogonowski, Rafa{\l}
Mo\.zd\.zonek
- Abstract summary: The biggest challenge in the application of deep learning to the medical domain is the availability of training data.
Data augmentation is a typical methodology used in machine learning when confronted with a limited data set.
In this work, a StyleGAN2-ADA model of Generative Adversarial Networks is trained on the limited COVID-19 chest X-ray image set.
- Score: 57.1795052451257
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: The biggest challenge in the application of deep learning to the medical
domain is the availability of training data. Data augmentation is a typical
methodology used in machine learning when confronted with a limited data set.
In a classical approach image transformations i.e. rotations, cropping and
brightness changes are used. In this work, a StyleGAN2-ADA model of Generative
Adversarial Networks is trained on the limited COVID-19 chest X-ray image set.
After assessing the quality of generated images they are used to increase the
training data set improving its balance between classes. We consider the
multi-class classification problem of chest X-ray images including the COVID-19
positive class that hasn't been yet thoroughly explored in the literature.
Results of transfer learning-based classification of COVID-19 chest X-ray
images are presented. The performance of several deep convolutional neural
network models is compared. The impact on the detection performance of
classical image augmentations i.e. rotations, cropping, and brightness changes
are studied. Furthermore, classical image augmentation is compared with
GAN-based augmentation. The most accurate model is an EfficientNet-B0 with an
accuracy of 90.2 percent, trained on a dataset with a simple class balancing.
The GAN augmentation approach is found to be subpar to classical methods for
the considered dataset.
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