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MIAdapt: Source-free Few-shot Domain Adaptive Object Detection for Microscopic Images

5 March 2025
Nimra Dilawar
Sara Nadeem
Javed Iqbal
Waqas Sultani
Mohsen Ali
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Abstract

Existing generic unsupervised domain adaptation approaches require access to both a large labeled source dataset and a sufficient unlabeled target dataset during adaptation. However, collecting a large dataset, even if unlabeled, is a challenging and expensive endeavor, especially in medical imaging. In addition, constraints such as privacy issues can result in cases where source data is unavailable. Taking in consideration these challenges, we propose MIAdapt, an adaptive approach for Microscopic Imagery Adaptation as a solution for Source-free Few-shot Domain Adaptive Object detection (SF-FSDA). We also define two competitive baselines (1) Faster-FreeShot and (2) MT-FreeShot. Extensive experiments on the challenging M5-Malaria and Raabin-WBC datasets validate the effectiveness of MIAdapt. Without using any image from the source domain MIAdapt surpasses state-of-the-art source-free UDA (SF-UDA) methods by +21.3% mAP and few-shot domain adaptation (FSDA) approaches by +4.7% mAP on Raabin-WBC. Our code and models will be publicly available.

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@article{dilawar2025_2503.03370,
  title={ MIAdapt: Source-free Few-shot Domain Adaptive Object Detection for Microscopic Images },
  author={ Nimra Dilawar and Sara Nadeem and Javed Iqbal and Waqas Sultani and Mohsen Ali },
  journal={arXiv preprint arXiv:2503.03370},
  year={ 2025 }
}
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