cs.AI updates on arXiv.org 09月19日
2D图像预训练模型提升3D医学图像分割
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本文探讨将2D自然图像预训练模型的知识迁移至3D医学图像分割,提出一种模型无关框架M&N,通过伪掩码迭代训练,实现半监督学习,在多个公开数据集上达到最先进的性能。

arXiv:2509.15167v1 Announce Type: cross Abstract: This paper explores the transfer of knowledge from general vision models pretrained on 2D natural images to improve 3D medical image segmentation. We focus on the semi-supervised setting, where only a few labeled 3D medical images are available, along with a large set of unlabeled images. To tackle this, we propose a model-agnostic framework that progressively distills knowledge from a 2D pretrained model to a 3D segmentation model trained from scratch. Our approach, M&N, involves iterative co-training of the two models using pseudo-masks generated by each other, along with our proposed learning rate guided sampling that adaptively adjusts the proportion of labeled and unlabeled data in each training batch to align with the models' prediction accuracy and stability, minimizing the adverse effect caused by inaccurate pseudo-masks. Extensive experiments on multiple publicly available datasets demonstrate that M&N achieves state-of-the-art performance, outperforming thirteen existing semi-supervised segmentation approaches under all different settings. Importantly, ablation studies show that M&N remains model-agnostic, allowing seamless integration with different architectures. This ensures its adaptability as more advanced models emerge. The code is available at https://github.com/pakheiyeung/M-N.

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3D医学图像分割 模型无关框架 半监督学习 知识迁移 性能提升
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