Semi-supervised Domain Adaptive Medical Image Segmentation through Consistency Regularized Disentangled Contrastive Learning

Hritam Basak, Zhaozheng Yin
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引用次数: 1

Abstract

Although unsupervised domain adaptation (UDA) is a promising direction to alleviate domain shift, they fall short of their supervised counterparts. In this work, we investigate relatively less explored semi-supervised domain adaptation (SSDA) for medical image segmentation, where access to a few labeled target samples can improve the adaptation performance substantially. Specifically, we propose a two-stage training process. First, an encoder is pre-trained in a self-learning paradigm using a novel domain-content disentangled contrastive learning (CL) along with a pixel-level feature consistency constraint. The proposed CL enforces the encoder to learn discriminative content-specific but domain-invariant semantics on a global scale from the source and target images, whereas consistency regularization enforces the mining of local pixel-level information by maintaining spatial sensitivity. This pre-trained encoder, along with a decoder, is further fine-tuned for the downstream task, (i.e. pixel-level segmentation) using a semi-supervised setting. Furthermore, we experimentally validate that our proposed method can easily be extended for UDA settings, adding to the superiority of the proposed strategy. Upon evaluation on two domain adaptive image segmentation tasks, our proposed method outperforms the SoTA methods, both in SSDA and UDA settings. Code is available at https://github.com/hritam-98/GFDA-disentangled
基于一致性正则化去纠缠对比学习的半监督域自适应医学图像分割
尽管无监督域自适应(UDA)是缓解域转移的一个很有前途的方向,但它们与有监督域自适应相比存在不足。在这项工作中,我们研究了相对较少探索的半监督域自适应(SSDA)用于医学图像分割,其中访问少量标记的目标样本可以大大提高自适应性能。具体来说,我们提出了一个两阶段的培训过程。首先,使用新颖的领域内容解纠缠对比学习(CL)和像素级特征一致性约束在自学习范式中对编码器进行预训练。所提出的CL强制编码器从源图像和目标图像中在全局尺度上学习区别性的内容特定但域不变的语义,而一致性正则化通过保持空间敏感性来强制挖掘局部像素级信息。这个预训练的编码器,连同一个解码器,使用半监督设置进一步微调下游任务(即像素级分割)。此外,我们通过实验验证了我们提出的方法可以很容易地扩展到UDA设置,增加了所提出策略的优越性。通过对两个域自适应图像分割任务的评估,我们提出的方法在SSDA和UDA设置下都优于SoTA方法。代码可从https://github.com/hritam-98/GFDA-disentangled获得
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