Histopathological Image Analysis with Style-Augmented Feature Domain Mixing for Improved Generalization

October 31, 2023 ยท Entered Twilight ยท ๐Ÿ› ISIC/Care-AI/MedAGI/DeCaF@MICCAI

๐Ÿ’ค TWILIGHT: Eternal Rest
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Repo contents: DataLoader.py, DataSET.py, README.md, Results, main.py, model_arch.py, plot.py

Authors Vaibhav Khamankar, Sutanu Bera, Saumik Bhattacharya, Debashis Sen, Prabir Kumar Biswas arXiv ID 2310.20638 Category cs.CV: Computer Vision Cross-listed cs.AI, q-bio.TO Citations 2 Venue ISIC/Care-AI/MedAGI/DeCaF@MICCAI Repository https://github.com/Vaibhav-Khamankar/FuseStyle Last Checked 1 month ago
Abstract
Histopathological images are essential for medical diagnosis and treatment planning, but interpreting them accurately using machine learning can be challenging due to variations in tissue preparation, staining and imaging protocols. Domain generalization aims to address such limitations by enabling the learning models to generalize to new datasets or populations. Style transfer-based data augmentation is an emerging technique that can be used to improve the generalizability of machine learning models for histopathological images. However, existing style transfer-based methods can be computationally expensive, and they rely on artistic styles, which can negatively impact model accuracy. In this study, we propose a feature domain style mixing technique that uses adaptive instance normalization to generate style-augmented versions of images. We compare our proposed method with existing style transfer-based data augmentation methods and found that it performs similarly or better, despite requiring less computation and time. Our results demonstrate the potential of feature domain statistics mixing in the generalization of learning models for histopathological image analysis.
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