ROAM: Random layer mixup for semi-supervised learning in medical images

Bdair T, Wiestler B, Navab N, Albarqouni S (2022)


Publication Type: Journal article

Publication year: 2022

Journal

Book Volume: 16

Pages Range: 2593-2608

Journal Issue: 10

DOI: 10.1049/ipr2.12511

Abstract

Medical image segmentation is one of the major challenges addressed by machine learning methods. However, these methods profoundly depend on a large amount of annotated data, which is expensive and time-consuming. Semi-supervised learning (SSL) approaches this by leveraging an abundant amount of unlabeled data. Recently, MixUp regularizer has been introduced to SSL methods by augmenting the model with new data points through linear interpolation at the input space. While this provides the model with new data, it is limited and may lead to inconsistent soft labels. It is argued that the linear interpolation at different representations provides the network with novel training signals and overcomes the inconsistency of the soft labels. This paper proposes ROAM as an SSL method that explores the manifold and performs linear interpolation on randomly selected layers to generate virtual data that has never been seen before, which encourages the network to be less confident for interpolated points. Hence it avoids overfitting, enhances the generalization, and shows less sensitivity to the domain shift. Extensive experiments are conducted on publicl datasets on whole-brain and lung segmentation. ROAM achieves state-of-the-art results in fully supervised (89.5%) and semi-supervised (87.0%) settings with relative improvements up to 2.40% and 16.50%, respectively.

Involved external institutions

How to cite

APA:

Bdair, T., Wiestler, B., Navab, N., & Albarqouni, S. (2022). ROAM: Random layer mixup for semi-supervised learning in medical images. IET Image Processing, 16(10), 2593-2608. https://doi.org/10.1049/ipr2.12511

MLA:

Bdair, Tariq, et al. "ROAM: Random layer mixup for semi-supervised learning in medical images." IET Image Processing 16.10 (2022): 2593-2608.

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