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arxiv: 2602.19848 · v2 · pith:ELY6BSPJnew · submitted 2026-02-23 · 💻 cs.CV

DerMAE: Improving skin lesion classification through conditioned latent diffusion and MAE distillation

classification 💻 cs.CV
keywords classificationdistillationmodelsclinicaldiffusionlesionpracticalpretraining
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Skin lesion classification datasets often suffer from severe class imbalance, with malignant cases significantly underrepresented, leading to biased decision boundaries during deep learning training. We address this challenge using class-conditioned diffusion models to generate synthetic dermatological images, followed by self-supervised MAE pretraining to enable huge ViT models to learn robust, domain-relevant features. To support deployment in practical clinical settings, where lightweight models are required, we apply knowledge distillation to transfer these representations to a smaller ViT student suitable for mobile devices. Our results show that MAE pretraining on synthetic data, combined with distillation, improves classification performance while enabling efficient on-device inference for practical clinical use.

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