Domain-interactive Contrastive Learning and Prototype-guided Self-training for Cross-domain Polyp Segmentation.

Ziru Lu, Yizhe Zhang, Yi Zhou, Ye Wu, Tao Zhou
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Abstract

Accurate polyp segmentation plays a critical role from colonoscopy images in the diagnosis and treatment of colorectal cancer. While deep learning-based polyp segmentation models have made significant progress, they often suffer from performance degradation when applied to unseen target domain datasets collected from different imaging devices. To address this challenge, unsupervised domain adaptation (UDA) methods have gained attention by leveraging labeled source data and unlabeled target data to reduce the domain gap. However, existing UDA methods primarily focus on capturing class-wise representations, neglecting domain-wise representations. Additionally, uncertainty in pseudo labels could hinder the segmentation performance. To tackle these issues, we propose a novel Domain-interactive Contrastive Learning and Prototype-guided Self-training (DCL-PS) framework for cross-domain polyp segmentation. Specifically, domaininteractive contrastive learning (DCL) with a domain-mixed prototype updating strategy is proposed to discriminate class-wise feature representations across domains. Then, to enhance the feature extraction ability of the encoder, we present a contrastive learning-based cross-consistency training (CL-CCT) strategy, which is imposed on both the prototypes obtained by the outputs of the main decoder and perturbed auxiliary outputs. Furthermore, we propose a prototype-guided self-training (PS) strategy, which dynamically assigns a weight for each pixel during selftraining, filtering out unreliable pixels and improving the quality of pseudo-labels. Experimental results demonstrate the superiority of DCL-PS in improving polyp segmentation performance in the target domain. The code will be released at https://github.com/taozh2017/DCLPS.

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跨领域息肉分割的领域交互式对比学习和原型指导下的自我训练。
根据结肠镜图像进行精确的息肉分割在结肠直肠癌的诊断和治疗中起着至关重要的作用。虽然基于深度学习的息肉分割模型取得了重大进展,但当它们应用于从不同成像设备收集的未见目标域数据集时,往往会出现性能下降的问题。为应对这一挑战,无监督领域适应(UDA)方法利用标记源数据和未标记目标数据来缩小领域差距,因而受到关注。然而,现有的 UDA 方法主要侧重于捕捉类表征,而忽略了域表征。此外,伪标签的不确定性也会影响分割性能。为了解决这些问题,我们提出了一种用于跨领域息肉分割的新型领域交互式对比学习和原型指导自我训练(DCL-PS)框架。具体来说,我们提出了采用领域混合原型更新策略的领域交互式对比学习(DCL)来区分跨领域的类特征表征。然后,为了增强编码器的特征提取能力,我们提出了基于对比学习的交叉一致性训练(CL-CCT)策略,该策略同时适用于主解码器输出和扰动辅助输出所获得的原型。此外,我们还提出了一种原型引导的自我训练(PS)策略,在自我训练过程中为每个像素动态分配权重,从而过滤掉不可靠的像素,提高伪标签的质量。实验结果表明,DCL-PS 在提高目标域息肉分割性能方面具有优势。代码将在 https://github.com/taozh2017/DCLPS 上发布。
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