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タイトル別表記
Looking Closer to the Transferability Between Natural and Medical Images
著者
Rufaida, Syahidah Izza National Taiwan University of Science and Technology
Putra, Tryan Aditya National Taiwan University of Science and Technology
Leu, Jenq-Shiou National Taiwan University of Science and Technology
キーワード
Data augmentation
medical image dataset
meta-learning
natural images dataset
transfer-learning
資料タイプ
学術雑誌論文
抄録
Transfer-learning has rapidly become one of the most sophisticated and effective techniques in dealing with medical datasets. The most common transfer-learning method uses of a state-of-the-art model and its corresponding parameters as the starting point for new tasks. Recent studies have found that transfer-learning between medical and natural images has minimal advantages, attributed to their different characteristics, even with sufficient data and iterations. This study employs a meta-learning technique, building upon the traditional transfer learning approach, to explore the potential of natural tasks as a starting point for analyzing medical images. In addition, this study investigates the performance of transferring the searched augmentation from natural to medical images. Several studies proposing search algorithms for data augmentation argue that the augmentation techniques can be effectively transferred across different datasets. The results revealed that the transferability between natural and medical images leads to reduced performance owing to the characteristic difference between medical and natural searched augmentation.
掲載誌名
IEEE Access
ISSN
21693536
出版者
IEEE
11
開始ページ
79838
終了ページ
79850
発行日
2023-07-28
権利情報
This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 License.
For more information, see https://creativecommons.org/licenses/by-nc-nd/4.0/
EDB ID
出版社版DOI
出版社版URL
フルテキストファイル
言語
eng
著者版フラグ
出版社版
部局
理工学系