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SelfAdapt: unsupervised domain adaptation of cell segmentation models

Authors

  • Fabian H. Reith
  • Jannik Franzen
  • J. Lorenz Rumberger
  • Dagmar Kainmueller

Journal

  • 2025 IEEE/CVF International Conference on Computer Vision Workshops (ICCVW)

Citation

  • ICCVW 5871-5878

Abstract

  • Deep neural networks have become the go-to method for biomedical instance segmentation. Generalist models like Cellpose demonstrate state-of-the-art performance across diverse cellular data, though their effectiveness often degrades on domains that differ from their training data. While supervised fine-tuning can address this limitation, it requires annotated data that may not be readily available. We propose SelfAdapt, a method that enables the adaptation of pre-trained cell segmentation models without the need for labels. Our approach builds upon student-teacher augmentation consistency training, introducing L2-SP regularization and label-free stopping criteria. We evaluate our method on the LiveCell and TissueNet datasets, demonstrating relative improvements in AP(0.5) of up to 29.64% over baseline Cellpose. Additionally, we show that our unsupervised adaptation can further improve models that were previously fine-tuned with supervision. We release SelfAdapt as an easy-to-use extension of the Cellpose framework. The code for our method is publicly available at https://github.com/Kainmueller-Lab/self_adapt.


DOI

doi:10.1109/iccvw69036.2025.00612