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Joint semi-supervised and contrastive learning enables domain generalization and multi-domain segmentation

8 May 2024
Alvaro Gomariz
Yusuke Kikuchi
Yun Yvonna Li
Thomas Albrecht
Andreas Maunz
Daniela Ferrara
Huanxiang Lu
Orçun Göksel
    VLM
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Abstract

Despite their effectiveness, current deep learning models face challenges with images coming from different domains with varying appearance and content. We introduce SegCLR, a versatile framework designed to segment images across different domains, employing supervised and contrastive learning simultaneously to effectively learn from both labeled and unlabeled data. We demonstrate the superior performance of SegCLR through a comprehensive evaluation involving three diverse clinical datasets of 3D retinal Optical Coherence Tomography (OCT) images, for the slice-wise segmentation of fluids with various network configurations and verification across 10 different network initializations. In an unsupervised domain adaptation context, SegCLR achieves results on par with a supervised upper-bound model trained on the intended target domain. Notably, we discover that the segmentation performance of SegCLR framework is marginally impacted by the abundance of unlabeled data from the target domain, thereby we also propose an effective domain generalization extension of SegCLR, known also as zero-shot domain adaptation, which eliminates the need for any target domain information. This shows that our proposed addition of contrastive loss in standard supervised training for segmentation leads to superior models, inherently more generalizable to both in- and out-of-domain test data. We additionally propose a pragmatic solution for SegCLR deployment in realistic scenarios with multiple domains containing labeled data. Accordingly, our framework pushes the boundaries of deep-learning based segmentation in multi-domain applications, regardless of data availability - labeled, unlabeled, or nonexistent.

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@article{gomariz2025_2405.05336,
  title={ Joint semi-supervised and contrastive learning enables domain generalization and multi-domain segmentation },
  author={ Alvaro Gomariz and Yusuke Kikuchi and Yun Yvonna Li and Thomas Albrecht and Andreas Maunz and Daniela Ferrara and Huanxiang Lu and Orcun Goksel },
  journal={arXiv preprint arXiv:2405.05336},
  year={ 2025 }
}
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